1. Introduction
As education has increasingly become a competitive factor in a knowledge-based economy, quality in higher education has emerged as an important international issue (Cooke and Leydesdorff, 2006). The European Commission has stated that European universities must achieve and maintain educational excellence if Europe is to achieve its aim of becoming the most competitive knowledge-based economy in the world (Diaconescu, 2009; Pickernell et al., 2010).
Given that marketing managers are frequently involved in decisions that have significant effects on corporate and national economies, education in marketing- management is important in promoting national competitiveness (Pride and Ferrell, 2000; Sinkovics and Schlegelmilch, 2000). It has been contended that traditional marketing strategies do not work in the current turbulent business environment (Courtney et al., 1997; Fortier et al., 1998), and the gap between academia and practice is widening (Tapp, 2004). Despite such concerns, the literature suggests that a bias exists in marketing education towards the achievement of academic status through writing and publishing of papers (Baumgartner and Pieters, 2003) rather than towards an improvement in marketing education per se (Straughan and Albers-Miller, 2000). Although some studies have addressed issues in marketing education - such as innovative teaching (Albers-Miller et al., 2001), marketing curricula (Athaide, 2005) and course structure for learning key marketing concepts (Eriksson and Hauer, 2004) - it would seem that insufficient attention is being paid to the quality of contemporary teaching in marketing-management.
The principal reason for the failure to assess the quality of education in marketing-management seems to be that different conceptions of higher education lead to different conceptions of educational quality (Bertolin, 2015), making it impossible to arrive at one set of standards for institutional assessment that would be applicable to all countries (UNESCO, 1998). Another possible reason for failure in this field is that few teachers actually participate in what might be called the “education quality agenda”, making it difficult to know what teachers regard as “quality” in higher education (Watty, 2003), and further, most of the information about management education is generated in the USA, which is of varying relevance to other countries (Imbs, 1995). Finally, given that the expectations of the public change continuously, previously satisfactory approaches to business education rapidly become outdated (Lengnick-Hall and Sanders, 1997; Kaplan et al., 2010). There is a need to examine the assumptions on which current practices of business education are founded, especially in countries that are seeking to compete on a global scale (Rowley et al., 1998).
The present study proposes an exploratory model of educational quality with a view to identifying and testing the variables that determine the learning outcomes of marketing students and the competitive positioning of universities. This study uses a sample of Spanish universities with an appropriate context because European Commission experts agree that Spain needs to develop intellectual infrastructures associated with marketing skills if the country is to advance an economic model based on high added value (Vanguardia Digital, 2006). In the first national survey of the public image of the Spanish university system, few respondents believed their training prepared them sufficiently for the labour market (El Mundo Digital, 2006). Moreover, a consensus exists that the country needs to improve its education system (Royo, 2010). Indeed, this situation prompted the European Commission to declare that Spanish universities produce too many candidates for unemployment (Davies and Walker, 2014).
Section 2 presents the theoretical framework of the study and extant models of quality of education; Section 3 proposes a model for assessing quality in marketing-management education; Section 4 describes the research design and the main features of the methodology of the empirical study used to test the proposed model; Section 5 presents an in-depth analysis of the results; and Section 6 presents a discussion of the managerial implications and future lines of research.
2. Theoretical framework
Despite the abundant literature on educational quality assurance in various countries, there is no consensus on several issues including: definition of educational quality; appropriate assessment indicators; and suitability of the models that have been proposed (Srikanthan and Dalrymple, 2003; Woodhouse, 1996).
There is considerable disagreement about the definition of educational quality, which is testimony to the complexity and multifaceted nature of the concept (UNICEF, 2000; Strauss and Vogt, 2001; UNESCO, 2002). The notion of “quality” in education is not only multidimensional but also often subjective (PHARE, 1998), because it depends on the specific goals of the local educational context in which it is being assessed (Adams, 1993; Beeby, 1966). According to Fife and Janosik (1999), defining educational quality is an almost impossible task.
The choice of assessment indicators is similarly problematic (Campbell and Rozsnyai, 2002). According to Ramina (2003), educational quality should be assessed by a set of appropriate indicators and a monitoring system, but this has not been done because educational quality is influenced by factors, many of which are non-measurable. There is therefore widespread disagreement on the selection of objective indicators, especially regarding attempts to quantify concepts such teaching, learning and research (Kaiser and Yonezawa, 2003). These difficulties are exacerbated when attempts are made to make international comparisons because the collection of objective data can be hampered by legislative differences about confidentiality and data protection. Kaiser and Yonezawa (2003) have advocated the use of plain descriptive information as an alternative to objective data.
For assessing educational quality, many suggestions have been made. The “Harvard model”, in which the quality of an educational institution is measured against that of the most prestigious institution, suffers from the conceptual weakness of assuming that all customers want the same thing (Fife and Janosik, 1999). Other models have drawn on the philosophy of Total Quality Management (TQM), but these approaches have been criticised because these models tend to focus on the exercise of control (Radford et al., 1997; Salter and Tapper, 2000); the adoption of TQM in academia (in general) is rather limited (Birnbaum and Deshotels, 1999; Vazzana et al., 2000). Other models have been based on pedagogical, cultural, social and economic perspectives. None of these models has achieved widespread acceptance, and the only consensus that appears to have emerged is that the measurement of quality in education will remain an elusive concept (Matsuura, 2003).
3. Conceptual model and research hypotheses
3.1 Paradigm underlying the proposed model
To overcome the perceived inadequacies of the models noted above (see Section 2), the paradigm of “input-process-outcome” was selected as the basis for this study’s proposed model for assessing the quality of marketing-management education.
This paradigm was chosen among the variety of theoretical frameworks in this area of knowledge, as many authors’ views coincide to indicated that the topic of quality of education could be defined regarding the human and material resources that are invested (Salam, 2015; REIP, 2002). Also, it conceives of quality education as an ongoing process that transforms the participants (Harvey and Green, 1993). Moreover, this paradigm facilitates that educational quality can be measured by assessing efficiency in the use of resources (Scheerens et al., 2011) and by examining the educational outcomes (Choon Ling et al., 2010).
This paradigm assumes that high-quality educational institutions empower their students with specific skills, knowledge and attitudes required to live and work in a knowledge society (Campbell and Rozsnyai, 2002; European Foundation for Quality Management - EFQM, 1995). This notion of educational quality is appropriate when “learner profiles” are subject to significant changes (Harvey and Knight, 1996).
Another justification for choosing this paradigm is that it allows integration of the theory of resource dependence. Although this theory was developed to study company performance, the present study contends that the resource-dependence theory can also be used to explain university competitiveness - which is essentially based on the effective management of educational resources and capabilities (Scott, 2003). Thus, this theory permitted the identification of the level of resources and capabilities used by the institutions in our study and the analysis of how these variables will affect the quality of their learning outcomes.
According to the literature (Lado and Wilson, 1994; Tumer and Crawford, 1994), such capabilities can be classified into four categories:
(1) organisational capabilities;
(2) input-based capabilities;
(3) managerial capabilities; and
(4) technical organisational capabilities.
This classification is used in the present study to describe the hypothesised relationships among the variables of the proposed model for assessing quality in marketing-management education.
3.2 Variables and hypothesised relationships
3.2.1 Organisational capabilities (based on outputs).
The organisational capabilities of the institution represent the dependent variables of the proposed model. These are the tangible and intangible outputs that provide added value for clients (Lado and Wilson, 1994) and/or enhance corporate reputation and image (Clark and Wheelwright, 1992; Verdin and Williamson, 1994). In the context of marketing education, the organisational capabilities of interest are the learning outcomes of marketing-management education (LOMME) and the competitive outcomes of marketing-management education (COMME).
Lengnick-Hall and Sanders (1997) defined excellence in management education as the achievement of increased knowledge and skills, the application of new knowledge and skills and the positive response of students. Although these general criteria are relevant and useful in evaluating an institution, these should be augmented by consideration of how well an institution responds to criticism of its output. For example, teaching in the field of marketing-management has been criticised for failing to meet the demands of new business environments, to focus on real job markets and to develop links with the business community (Rowley and Rowley, 2000). In addition, it has also been claimed that contemporary business education does not develop interpersonal skills and teamwork (Lerner, 1995) and that it has failed to address issues such as social responsibility and the need for leadership training ((UNESCO, 1998). Canzer (1997) emphasised the acquisition of subject knowledge and theoretical concepts, together with the ability to apply this knowledge to real marketing situations. Gainesville and McMullen (1998) suggested that graduates must be able to handle problem-solving, communicate effectively and exercise managerial judgement. Walker et al. (1998) favoured the ability to integrate and use marketing knowledge in a creative and synergistic manner. Adrian and Palmer (1999) and Stern and Tseng (2002) recommended skills include leadership, people management, power distribution, team-building and interpersonal skills to promote effective interaction with subordinates, peers and superiors, as well as linkages to business practice.
The proposed model evaluates the first dependent variable, LOMME, in terms of applicability to the needs of companies, contribution to solving national problems and students’ ability to solve real problems, work in teams, develop innovative solutions and demonstrate leadership.
The second dependent variable is COMME. Universities depend on their reputation and image to ensure funding for educational programmes and research initiatives (Martínez, 2005). As a consequence, the pursuit of prestige is typical of academic institutions worldwide (Brewer, et al., 2002). According to Holdswoth and Nind (2005), universities compete in the “marketplace of public opinion” on the basis of their prestige or reputation. League tables and rankings thus assume great importance as indicators of a university’s market position in the educational system and the likelihood that it will acquire the resources it needs (Lombardi et al., 2001). Prestige has been described as a form of “brand-name recognition”, which is derived from historical visibility; as such, prestige actually precedes market share (Bok, 2003). Prestige effectively differentiates an institution from its competitors in ways that stakeholders find meaningful. The proposed model evaluates the second dependent variable COMME, based on a university’s prestige or reputation as perceived by students, donors, market competitors and employees.
3.2.2 Input-based capabilities.
The first of the independent variables in the model is associated with the input-based capabilities of the institution (availability of the various resources: financial, physical, human and technological) that enable any organisation to create and deliver products and services valued by customers (Grant, 1991; Amit and Schoemaker, 1993).
Several studies have confirmed that resource availability enhances learning achievement at all levels of education (Carron and Châu, 1996; Glewwe and Jacoby, 1994). Many universities have recognised that a well-resourced system of incentives attracts and retains the best professors (Henry et al., 1997). These institutions understand that they also require physical resources to meet the challenges of providing education within a changing business environment (Rowley et al., 1998). Institutions from other regions (including Central America, South America and Europe) have also recognised that a link exists between a university’s level of competitiveness and the procurement of financial resources (EUA, 2003).
The following hypotheses are proposed:
H1. A higher level of resource availability is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
3.2.3 Managerial capabilities.
The next group of independent variables in the model is associated with managerial capabilities: the manager’s ability to: develop a beneficial relationship between an organisation and its environment (Lado and Wilson, 1994), design the organisation and coordinate its various functions (Boyatzis, 1999) and provide direction and control in implementing organisational systems to realise organisational objectives (Tumer and Crawford, 1994). In the context of the present study, managerial capabilities are evaluated in terms of: management style, teaching methods and evaluation of faculty performance.
Management style: Pascarella and Terenzini (1991) contended that the organisational environment of an academic department could be more important for student learning than the subject matter itself. “Participatory” management style promotes the fulfilment of a university’s social responsibilities (Neave, 1998; (UNESCO, 1998) and provides a climate for optimal adjustment to changing societal conditions (Dill, 2003). This management style is also said to provide an atmosphere in which teachers can focus on instruction and student achievement (Wyman, 2001), thus fostering “learning departments” (Walvoord et al., 2000). In this regard, quality assurance is increasingly based on the autonomous participation of all organisational members in the pursuit of quality, rather than on explicit external quality control (Frackmann, 2000; Leithwood and Menzies, 1998).
The following hypotheses are proposed with regard to the relationship between management style and competitive outcomes:
H2.1 A higher level of participatory management style is associated with: a higher level of learning outcomes and a higher level of competitive outcomes.
H2.2 A higher level of non-participatory management style is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
For teaching methods, we assess whether the academic staff are adequately conveying the knowledge they wish to impart (Frost and Fukami, 1997). Several studies support that teaching methods should aim to develop critical thinking as a problem-solving tool (Bok, 1986; Dubois, 1995). The current teaching method posits the lecturer as the authority from whom all knowledge emanates (Rowley and Rowley, 2000), with the students posited as passive recipients of information (Lengnick-Hall, 1996), encouraging an algorithmic reading of reality (Bergadaà, 1990) and the development of resources that are not actually used in business practice (Cova et al., 1994).
It has been contended that marketing-management education requires non-structured teaching methods that involve students as active participants in the learning process instead (Alavi, et al., 1995; Leidner and Jarvenpaá, 1995) and co-producers of their training (Lengnick-Hall and Sanders, 1997), and this is consistent with contemporary developments in organisational management, which encourage teamwork and good interpersonal skills (Baldwin et al., 1997). (UNESCO (1998) has stated that higher education must implement pedagogical methods based on participatory knowledge if graduates are to learn how to be innovative and creative in their future work.
On the basis of the above discussion, the following alternative hypotheses are proposed:
H3.1 A higher level of non-structured teaching methods is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
H3.2 A higher level of structured teaching methods is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
Evaluation of faculty performance can be done by: government-imposed and/or external stakeholders’ criteria. The first refers to the assessment of faculty performance on the basis of government-mandated criteria (such as seniority and “civil service” procedures). The second refers to the assessment of faculty performance by student surveys, academic and scientific publishing and consultancies.
Cave et al. (1997) have suggested that academic quality is equivalent to the quality of teaching at a university. The reaction of students to a course is a way of determining how well a teaching system is working - because education is a service in which the participation of the customer (student) influences both the service process (learning) and the results of that service process (Lengnick-Hall and Sanders, 1997). In addition, because academic quality is also associated with sharing information on best practices (Zhou, 2000), faculty performance can be assessed on the basis of the number of textbooks and educational materials that are published and the number of consulting contracts that are secured for the university. The publication of research papers in scholarly journals and conferences represents an additional criterion of faculty performance; such publications not only complement effective teaching but also represent the accepted sine qua non of academic excellence (Braimoh, 2002).
The following alternative hypotheses are proposed with regard to the relationship between the evaluation of faculty performance and the learning outcomes and competitive outcomes:
H4.1 A higher level of government-imposed criteria in the evaluation of faculty performance is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
H4.2 A higher level of external stakeholder criteria in the evaluation of faculty performance is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
3.2.4 Technical organisational capabilities.
Technical organisational capabilities are essentially the talents and skills that enable inputs to be turned into outputs (Lado et al., 1992; Green, 1999). They represent sources of competitive advantage because they are often difficult to copy and remain embedded in the tacit routines and practices of the organization (Kogut and Zander, 1996).
These capabilities are assessed in terms of the variable teacher qualification. Educational research has established that, in all forms of education, positive relationships exist between years of teaching experience and student outcomes (Greenwald et al., 1996) and between teachers’ academic qualifications and learning outcomes (Strauss and Vogt, 2001). These relationships have been confirmed at the level of higher education, where quality has been positively associated with the level of education and qualifications of faculty members (Ramina, 2003; Pawlowski, 2004). Also, there is a relationship between the level of international experience of teachers and the quality of education (Heyl and McCarthy, 2003).
The following hypothesis is proposed between variables, teacher qualification, learning outcomes and competitive outcomes:
H5. A higher level of teacher qualification is associated with (a) a higher level of learning outcomes and (b) a higher level of competitive outcomes.
3.2.5 Control variable.
Because the private or public nature of an educational institution might affect the perception and use of variables associated with educational quality, the proposed model includes a dichotomous control variable that indicates the nature of the university (“0” = private; “1” = public).
The literature offers conflicting points of views on whether the quality of education is affected by the private or public nature of an institution. Private institutions tend to have a reputation for relaxed academic standards, and prospective employers can be skeptical about the quality of the education received by the graduates of such institutions (Bernasconi, 2003). Others have contended that private institutions are more efficient and flexible than public institutions, and that they provide the type and quality of education that students (and their parents) demand (Lockheed and Jiménez, 1994).
In Spain, private universities tend to be younger and to have a larger academic staff, more library resources and better facilities. They are usually smaller, more specialised and offer fewer degree programmes. In contrast, public universities in Spain are typically crowded and have fewer staff; however, they offer more degrees, and their academic level is reported to be higher (E-campus, 2006).
The control variable in the proposed model was included to account for these differences and their potential impact on the variables associated with education quality.
4. Methodology
4.1 Sample and data collection
To apply and test the proposed model for assessing the quality of marketing-management education, an empirical study was conducted among academic staffs who conduct courses in marketing-management in Spanish universities. For this purpose, a self-completed questionnaire was developed and distributed to a cross section of potential respondents. Because there is no comprehensive directory of all university teachers of marketing courses in Spain, a list was created by consulting individual university websites. The final list of potential respondents consisted of individuals who: were designated as teachers of marketing-management courses at their universities and could be contacted by either e-mail or postal mail.
We use the e-mail to present the research and the survey. But, the survey was sent by postal mail in an envelope with the address and postal stamp to facilitate the return of the survey. It is convenient to point out that our survey did not use the online format because a pretesting showed that the survey was perceived too long and very complex for the use of Likert scales.
The questionnaire was sent to the entire target population. To maintain the anonymity of the respondents, they were asked to only respond to their membership in a public or private university. Although ideal would have been to have identified the response rate by university, it was not possible. Thus, we finally settled on the number of professors who responded to the survey, allowing us to maximise the size of the sample and thus use multivariate analysis.
The returned questionnaires were divided into quartiles according to the date on which they were received (with the first quartile containing the earliest returns and the fourth quartile containing the latest returns). Those in the first and fourth quartiles were compared by t-tests, indicating that there were no significant statistical differences on average scores for most measures.
The overall response rate from the complete list of potential respondents was 14 per cent (with data from five respondents being discarded because of missing and invalid data). The final sample included 124 teachers in public institutions (70.45 per cent of the sample) and 52 teachers in private institutions (29.55 per cent of the sample). There were 136 male respondents (77.27 per cent) and 40 female respondents (22.73 per cent). Also, respondents were asked to indicate training received outside their home country (none = 40.34 per cent; some courses = 23.86 per cent; bachelor’s degree = 6.82 per cent; master’s degree = 18.18 per cent; doctorate =10.80 per cent). In relation to their years of experience, the following distribution was obtained: 1-4 years = 23.9 per cent; 5-10 years = 35.2 per cent; þ10 years = 40.9 per cent. By category or academic rank, the following distribution was found: other (lecturer, etc.) = 8.87 per cent; associate professor = 39.52 per cent; professor = 30.65 per cent; full Professor = 20.97 per cent.
4.2 Measures
4.2.1 Resources for teaching.
The variable “resources for teaching” was evaluated in terms of eight items:
(1) government funding for higher education;
(2) support for faculty salaries;
(3) support for administrative salaries;
(4) student library resources;
(5) faculty library resources;
(6) technical resources;
(7) political support; and
(8) private funding for higher education.
The responses were recorded on a scale from 1 to 5 (1 = none; 5 = extensive). Cronbach’s alpha for this variable was 0.8214, indicating an acceptable degree of reliability for this scale. Factorial analysis grouped all items into one factor (eigenvalue = 2.93474).
4.2.2 Management style.
The variable “management style” was assessed by four items derived from Cameron and Quinn (1999). The responses were recorded on a scale from 1 to 5 (1 = strongly disagree; 5 = strongly agree). The chi-square for this variable was 17.0226 ( p < 0.0007) and Kendall’s W measure was 0.263. These results indicate a low (although significant) level of agreement among the respondents’ ratings.
The variable management style was recoded as two subsidiary variables:
(1) non-participatory management style (characterised by rules and procedures and by distinguished staff members exercising the most influence); and
(2) participatory management style (characterised by a collegiate and egalitarian management style, regardless of rank).
4.2.3 Teaching methods.
The variable “teaching methods” was assessed by seven items derived from Roach et al. (1993) and Clow and Wachter (1996). The responses were recorded on a scale from 1 to 5 (1 = none; 5 = extensive). The chi-square value for this variable was 345.0293 ( p < 0.0000) and Kendall’s W measure was 0.3993. These results indicate a low (although significant) level of agreement among the respondents’ ratings.
The variable teaching methods was recoded as two subsidiary variables:
(1) structured teaching methods (characterised by class lectures, structured presentations, conferences); and
(2) non-structured teaching methods (characterised by case studies, role-playing, business games and internships).
4.2.4 Evaluation of faculty performance.
The variable “evaluation of faculty performance” was assessed by six items derived from Braun and Merrien (1999) and Burton (1983). The responses were recorded on a scale from 1 to 5 (1 = none; 5 = extensive). The chi-square value for this variable was 70.8143 ( p < 0.0000) and Kendall’s W measure was 0.3628. These results indicate low (although significant) level of agreement among respondents’ ratings.
The variable evaluation of faculty performance was recoded as two subsidiary variables:
(1) government-imposed criteria (characterised by assessment of faculty performance on the basis of seniority and civil service criteria); and
(2) external stakeholder criteria (characterised by assessment of student surveys, academic and scientific publishing and consultancies, etc.).
4.2.5 Teacher qualification.
The variable “teacher qualification” was assessed by three items: teacher’s experience, academic level and international experience. Responses with regard to teaching experience were recorded on a scale from 1 to 3 (1 = 1-4 years; 2 = 5-10 years; and 3 = more than 10 years). Responses with regard to academic level were based on the respondent’s highest degree: (1 = bachelor’s degree; 2 = master’s degree; and 3 = doctorate). To assess international experience, respondents were asked to indicate whether they received training outside their home country (1 = none or some courses; 2 = bachelor’s degree or master’s degree; 3 = doctorate). The chi-square value for this variable was 73.2947, and Kendall’s W measure was 0.3290 ( p < 0.0000). These results indicate that there was significant agreement among the respondents’ ratings. Factorial analysis grouped all items onto one factor (eigenvalue = 1.77515).
4.2.6 Learning outcomes.
The dependent variable of LOMME was evaluated by six items. Respondents were asked whether the educational outcomes of their course:
(1) are adapted to business needs;
(2) are instrumental in solving the country’s needs;
(3) develop students’ problem-solving skills;
(4) develop student teamwork;
(5) develop innovative solutions; and
(6) provide students with leadership skills.
The responses were recorded on a scale from 1 to 5 (1 = strongly disagree; 5 = strongly agree).
Cronbach’s alpha for this variable was 0.8584, indicating a high degree of reliability of this scale. Factorial analysis grouped all items onto one factor (eigenvalue = 3.55246).
4.2.7 Competitive outcomes.
The second dependent variable, COMME, was evaluated by four items:
(1) reputation and positioning with regard to students;
(2) reputation and positioning with regard to donors;
(3) reputation and positioning with regard to market competitors; and
(4) reputation and positioning with regard to employees.
The responses were recorded on a scale from 1 to 5 (1 = poor positioning; 5 = good positioning).
Cronbach’s alpha for this variable was 0.8098, indicating a high degree of reliability of this scale. Factorial analysis grouped all items onto one factor (eigenvalue = 2.58161).
5. Results
5.1 Descriptive statistics
Descriptive statistics, including means and standard deviations, of the variables are reported in Table 1.
Table 1
.Variables | Mean | SD |
Resources for teaching | 2.09 | 0.68 |
Teacher qualification | 1.98 | 0.87 |
Non-participatory style | 3.09 | 0.69 |
Participatory style | 2.72 | 1.10 |
Structured teaching methods | 4.02 | 0.67 |
Non-structured methods | 2.19 | 0.72 |
Government criteria | 3.36 | 0.75 |
External criteria | 2.78 | 0.89 |
Learning outcomes | 3.30 | 0.88 |
Competitive outcomes | 3.29 | 0.79 |
Note: n = 176 | ||
Source: Own elaboration |
Source: Own elaboration
5.2 Data analysis
Three procedures were used in data analysis:
(1) correlation matrix;
(2) multivariate analysis of variance (MANOVA); and
(3) two-stage least squares regression analysis.
MANOVA was chosen (rather than structural equation modelling) because it is a suitable technique for testing theory in the early stages of development, when research questions are more concerned with the existence of relationship than with their strength (Pedhauzer and Schmelkin, 1991). If the results are significant, it is appropriate to conduct individual multiple regression analyses for each dependent variable (which was done in this study).
The results of the correlation matrices between the independent variables and the dependent variables are shown in Table 2 (learning outcomes) and Table 3 (competitive outcomes). These findings suggested partial acceptance of the hypotheses.
A MANOVA test was used to assess the overall effects of the independent variables on the dependent variables (learning outcomes and competitive outcomes). The multivariate F value was significant (Wilks’ lambda: 0.28; p = 0.000), which showed that the dependent variables were related to variations in the independent variables.
5.3 Testing of hypotheses
The third data-analysis procedure used a two-stage least squares regression analysis (with an SPSS statistical package) to assess the effect of each of the model variables on the two dependent variables (LOMME and COMME).
5.3.1 Hypothesised relationships with learning outcomes.
Table 4 shows the results of the regression analysis with LOMME as the dependent variable. The results indicate that some of the hypothesised relationships of the model were statistically significant (at p < 0.01). The independent variables explained about 33 per cent of the variation in the LOMME.
Table 4 also shows the results of testing H1a, which proposed that a higher level of resource availability is associated with a higher level of learning outcomes. The positive relationship between resources and learning outcomes was confirmed when the control variable (type of university) was included (Model 2). This shows that the hypothesized relationship is conditioned by the type of institution (public or private).
The results also confirm the positive relationship between a participatory management style and the level of LOMME, as proposed by H2.1a. (In contrast, the exploratory results shown in Table 3 suggest that a non-participatory management style did not have a positive relationship with the learning outcomes of an educational institution.) When the control variable (type of university) was added (Model 2), the positive relationship was enhanced, suggesting that the influence of the management style on learning outcomes is affected by the different work environments of public and private universities. These results might be due to the fact that private universities often have more freedom in decision-making than public universities, where the work environment is more likely to be conditioned by bureaucratic rules and controls.
H3 proposed that teaching methods influenced LOMME. The results in Table 3 confirm H3.1a, which proposed that non-structured teaching methods improve educational outcomes. Although this was a strong and significant relationship, it was also sensitive to differences in the methods used in public and private universities.
Table 2
.Learning outcomes | |||||||
Hypotheses | Adapted business needs | Solving country’s needs | Problem-solving skills | Team-work | Innovative solutions | Leadership skills | Average |
H1: Resources | 0.2266* | 0.2170* | 0.2918*** | 0.2124* | 0.2610* | 0.1151 | 0.2132* |
H2.1: Participatory management style | 0.3290*** | 0.2474* | 0.2120*** | 0.3473*** | 0.2673*** | 0.2734*** | 0.3501*** |
H2.2: Non-participatory management style | 0.0915 | 0.0730 | 0.0156 | 0.0697 | 0.0382 | 0.1070 | 0.0216 |
H3.1: Structured teaching methods | 0.2499* | 0.0266 | 0.0577 | 0.0745 | 0.0581 | 0.0962 | 0.0577 |
H3.2: Non-structured teaching methods | 0.1639* | 0.2457*** | 0.2330* | 0.3367*** | 0.3859*** | 0.4710*** | 0.3684*** |
H4.1: Government-imposed criteria for faculty | |||||||
assessment | 0.2352* | 0.1826* | 0.4163*** | 0.0000 | 0.0967 | 0.2568* | 0.2962* |
H4.2: External stakeholders’ criteria for faculty | |||||||
assessment | 0.2976*** | 0.1729* | 0.3415*** | 0.3115*** | 0.3589*** | 0.2576* | 0.3722*** |
H5: Teacher qualification | 0.2546* | 0.1555 | 0.2250* | 0.2487* | 0.2489* | 0.2460*** | 0.2884* |
Notes: n = 176; *p < 0.05; **p < 0.01; ***p < 0.000 Source: Own elaboration |
H4 proposed that methods used in evaluating faculty performance were related to LOMME. Table 4 shows that the use of external stakeholder criteria (student surveys, academic and scientific publishing, consultancies) in evaluating faculty had a positive relationship with learning outcomes, as proposed by H4.2a. However, the influence of these criteria on learning outcomes was appreciable only when the control variable (type of university) was incorporated (Model 2). The explanation for this finding could be that private institutions are more likely to base their evaluation on external (or market) criteria, whereas public universities are more likely to use government-imposed evaluation criteria (seniority and civil service criteria).
H5a, which proposed a positive relationship between teacher qualification and the learning outcomes, was partially confirmed. This relationship was previously shown to exist in Spain in a qualitative exploratory study by Cambra and Cambra (2003); however, the relationship in the present study was weaker - because the control variable (type of university) was included in this study. It would thus seem that the positive relationship is conditioned by the fact that Spanish universities differ in terms of faculty-accreditation criteria. In Spain, only public universities control teaching accreditation; however, there have recently been demands for similar regulation in the private sector.
In summary, the results show that higher levels of educational capabilities (input- based, managerial, organisational and technical organisational) have a positive relationship with learning outcomes in marketing-management education in Spanish universities.
Table 3. Correlation matrix of competitive outcomes and model variablesCompetitive outcome | |||||
Hypotheses | Students | Donors, market | Competitors | Employees | Average |
H1: Resources | 0.2026* | 0.1424 | 0.1805* | 0.2391** | 0.2509* |
H2.1: Participatory management style | 0.1901* | 00.1109 | 0.0619 | 0.3786** | 0.2939** |
H2.2: Non-participatory management style | 0.0096 | 0.0251 | 0.0538 | 0.3769** | 0.2656* |
H3.1: Structured teaching methods | 0.0795 | 0.0971 | 0.1543* | 0.1556 * | 0.1365 |
H3.2: Non-structured teaching methods | 0.1725* | 0.0647 | 0.0490 | 0.1596* | 0.1431* |
H4.1: Government-imposed criteria for faculty | |||||
assessment | 0.0930 | 0.2241** | 0.2396** | 0.1538* | 0.1611* |
H4.2: External stakeholders’ criteria for faculty | |||||
assessment | 0.2867** | 0.2699** | 0.1202 | 0.1906* | 0.2860** |
H5: Teacher qualification | 0.2324** | 0.1748* | 0.2153** | 0.0682 | 0.1521* |
Notes: n = 176; *p < 0.05; **p < 0.01; ***p < 0.000 Source: Own elaboration |
Table 4
.Variables | Model 1 | Model 2 |
---|---|---|
H1a: Resource availability | 1.452þ | 2.519* |
H2.1a: Participatory management style | 2.771* | 3.370** |
H3.1a: Non-structured teaching methods | 3.210** | 3.746** |
H4.2a: External stakeholder criteria for faculty evaluation | 1.893þ | 2.764** |
H5a: Teacher qualification | 2.915* | 1.336þ |
Summary statistics | 0.55470 | 0.59774 |
Multiple R | 0.30769 | 0.35729 |
R2 | 0.27781 | 0.32693 |
Adjusted R2 | 0.04912 | |
4R2 | ||
F-statistic | 10.29636 | 11.76676 |
p | 0.0000 | 0.0000 |
Notes: n = 176; þp < 0.10; *p < 0.05; **p < 0.01; ***p < 0.000 | ||
Source: Own elaboration |
5.3.2 Hypothesised relationships with competitive outcomes.
Table 5 shows the results of the regression analysis with COMME as the dependent variable. The results show that several hypothesised relationships in the model were statistically significant (at p < 0.01). The independent variables explained approximately 42 per cent of the variation in the COMME.
H1b, which proposed that a positive relationship exists between availability of resources and the level of COMME, was confirmed. The relationship was enhanced with the inclusion of the control variable (type of university) (Model 2).
The findings also confirm H2.1b, which proposed that a positive relationship exists between a participatory management style and competitive outcomes. The results also support H3.1b, which proposed a positive relationship between non-structured teaching methods and COMME; this relationship was also enhanced when the control variable (type of university) was included (Model 2).
The results also show that the use of external stakeholder criteria in evaluating faculty performance (student surveys, academic and scientific publishing criteria, consultancies) had a positive relationship with COMME, as proposed by H4.2b; indeed, the use of external stakeholder criteria in the evaluation of faculty performance was the most influential independent variable with regard to COMME.
H5b, which proposed a positive relationship between teacher qualification and COMME, was not confirmed. The initial weak relationship (Model 1) was eliminated when the control variable (type of university) was included.
In summary, the results provide general support for the proposed model, thus
substantiating the contention that the suggested variables are reliable in predicting the levels of educational quality (as measured by LOMME and COMME) in marketing- management programmes at Spanish universities.
Table 5
.Variables | Model 1 | Model 2 |
---|---|---|
H1b: Resource availability | 2.016* | 2.820** |
H2.1b: Participatory management style | 3.604** | 3.712** |
H3.1b: Non-structured teaching methods | 2.333* | 2.507** |
H4.1b: Government-imposed criteria for faculty evaluation | 2.398* | 3.944** |
H4.2b: External stakeholders’ criteria for faculty evaluation | 2.180* | |
H5b: Teacher qualification | 1.380þ | |
Summary statistics | 0.5827 | 0.66827 |
Multiple R | 0.3959 | 0.44659 |
R2 | 0.3659 | 0.4196 |
Adjusted R2 | 0.0537 | |
4R2 | ||
F-statistic | 12.64452 | 16.54306 |
p | 0.0000 | 0.0000 |
Notes: n = 176; þp < 0.10; *p < 0.05; **p < 0.01; ***p < 0.000 | ||
Source: Own elaboration |
6. Conclusions, implications and limitations
The purpose of this study was to propose and test a model of variables for assessing the quality of marketing-management education, which was defined in terms of students’ learning outcomes and the university’s competitive positioning. The study also examined how the influence of the proposed variables is moderated by the inclusion of a control variable.
There are some theoretical implications in this research. Our results support that the paradigm of “input-process-outcome” is useful to study the quality of education as a productive system, in which inputs are transferred into outcomes. This paradigm permits empirical testing to support that the resources and capabilities used by the institutions in our study affect the quality of their outcomes.
Likewise, this paradigm allows us to integrate the theory of resource dependence.
Although this theory was developed to study company performance, the present study confirms that the resource-dependence theory can also be used to explain university competitiveness. Thus, our findings contributed and advanced the existing literature on higher education quality.
These results have important implications for organisational theory, as they suggest that fostering organisational performance is a multicapabilities’ endeavour, including organisational capabilities, input-based capabilities, managerial capabilities and technical organisational capabilities, which are essential and interdependent, from the perspective of competitive advantage, these results can support the resource-based perspective that sustainable competitive advantage is the outcome of rational managerial choices regarding the disposition of resources. As a consequence, the study suggests that the implementation of an educational strategy is likely to be most successful when these various teachers and organisational variables are addressed simultaneously.
In term of managerial implication, our research provides some insights and feedback for the administrators of higher education institutions. Our results provide them with the use of managerial strategies for incorporating the resource-capability variables linked to learning outcomes for students and the competitive positioning of universities. Moreover, some scales of this survey (management style, teaching methods, evaluation of faculty performance) are a potential self-diagnostic tool for managers, as they describe the administrative actions that higher education institutions could use to implement competitive strategies for their organisations.
Because marketing-management education influences a firm’s competitiveness, practitioners are directly and indirectly affected by the quality of educational outcomes in the country where their firms operate. Therefore, our results are important for a globalized labour market where companies can hire students trained in other European countries. Thus, managers have guidelines to compare the education that candidates have received, according to the resource-capability variables that have been used in their training, which may vary according to the countries where they have been trained.
The study provides guidance to firms that develop training policies for their marketing directors. The results help identify the teaching methods that are the most effective for internal personnel training and indicate the potential skills to be expected of a graduate of a particular university. The learning outcomes included in the study can also assist in setting career-development objectives and the best methods to attain them and provide parameters that managers can use for self-evaluation or employee evaluation.
The findings have several implications for policymakers, especially those responsible for developing policy for Spanish and European education. First, it shows that the respondents believed that several capabilities were at moderate or low levels at their universities. This finding is in accordance with the fact that the economic downturn has led many European Union countries to reduce investment in education (Katsarova, 2015).
Secondly, structured teaching methods were found to be common in Spanish universities, and participatory management styles were found to be relatively uncommon in Spanish university marketing departments. These findings are significant for policymakers because it has been claimed that these factors can impede the development of good universities in Spain (Pérez-Díaz, 2006).
The major limitations of this study are common to all research in education. Data were imperfect, and the structures of the educational variables used in the study might well be incomplete (Todd and Wolpin, 2003). Also, the study was limited by the individual and organisational cross-level relationships in the model, as well as the auto-selection bias inherent in the sample. Despite these limitations, the sampling procedure and reliability tests conducted on the variables have ameliorated these difficulties to some extent.
To enhance the validity and generalisation of the research findings, future studies could use more direct objective measures of the theoretical constructs and explore the causal relationships among the variables. In addition, future studies might examine the proposed model with scholars from different countries and from diverse disciplines. Thus, comparative studies might be carried out as a further research.