employed in the study. Based on the consecutive sampling technique, a sample of 1,200 students participated in the study. Structural equation modeling was used to analyze data. Findings: Results from the analysis showed influence of attitude (? = 0.321, p = 0.000) on entrepreneurial intention. Similarly, perceived behavioral control (? = 0.446, p = 0.000) also showed significant influence on entrepreneurial intention, whereas subjective norms (? = 0.032, p = 0.228), did not show any significant influence on entrepreneurial intentions. The overall joint significance of the antecedent factors explained 48% (r 2 = 0.479, p < 0.01) of the variance in entrepreneurial intention. Research Limitations/Implications: The study sampled only non-business entrepreneurship students of the University of Cape Coast. The questionnaire was also administered after the students had gone through a semester course in entrepreneurship. Future research could look at a comparative study on entrepreneurial intention between the business and non-business students. A further research could also do a pre-assessment of the students' knowledge and entrepreneurial intentions and another after the course to give any distinct change in attitude if there be any in the form of longitudinal study. Practical Implications: The introduction of the course has created the required entrepreneurial intentions in students to start a new venture in line with the Theory of Planned Behaviour. Overall, results of the study revealed that the introduction of the entrepreneurship course had created the required behavioral intention in students to start a new venture. Through the knowledge gained from the course, students have reshaped their perception of entrepreneurship. Social Implications: This study contributes to the literature on entrepreneurial education and intentions of students in the Ghanaian tertiary education sector. It also serves as a source of reference for similar studies to be replicated. The study also provides policy -makers a step in reducing graduate I. Introduction ountries within Sub-Saharan Africa are faced with challenges in the area of governance, human resource development and unemployment (especially graduate employment). The issue of graduate unemployment is dominant in Ghana. In its 2011 report, the Institute of Statistical, Social and Economic Research (ISSER) indicated about 50% of graduates might wait up to 2014 without finding jobs. In effect, the issue of graduate unemployment is a key problem in the country. Meanwhile, one of the strategies suggested in the literature for reducing graduate unemployment is entrepreneurship. But how well is entrepreneurship incorporated into the curricula of universities to bring about the needed behavioral change in graduates? Entrepreneurship education is one of the most effective means of enhancing entrepreneurial capacities and therefore self-employment of graduates and economic development. In Ghana, the vast and everincreasing gap between the supply of, and demand for jobs has widened due to the influx of private tertiary institutions. Unfortunately, while job opportunities from the government or public sector have virtually scaled down, private sector growth has not been able to adequately absorb the increased number of graduates (Baah-Boateng, 2013). According to Owusu-Ansah (2012), some of the reasons often cited for the high unemployment rates among the youth include unskilled graduates, the mismatch between skills demand and supply, poor technical skills, constrained SME's sector, slow expansion and growth, of the private sector. Given the dwindling job prospects from the public sector and the slow rate of job creation within the private sector, the only viable option for graduate youth lies in creating their jobs. Indeed, for a developing country like Ghana, Small and Medium-Sized Enterprises (SMEs) play a vital role for new venture creation and account for over 80-90% of # C The rest of the report is organized as following: the first section comprises a review of Ajzen's theory of planned behavior and associated empirical studies, followed by the methodology consisting of the study design, population, sampling procedure, instruments, data collection and data analysis procedures. Results and discussion are presented in the next section and finally, conclusions and recommendations for the study. # II. Literature Review a) The Theory of Planned Behavior (TPB) achievement depends on the availability of resources and opportunities. TPB predicts intentions from an individual's attitude towards behavior, subjective norms, and perceived behavioral control. In the context of entrepreneurship, intentions are defined in the literature as one's desire to own one's business. Thompson (2009) provides a working definition of intention as an acknowledged conviction by a person that he/she intends to set up a new business venture and consciously plans to do so at some point in future. Thus, once the formation of intentions occurs, actual behavior is expected. According to Ajzen (1991) the attitudes toward the intended behavior, social norms with respect to the behavior and perceived control over the behavior are usually found to predict behavioral intentions with a high degree of accuracy. It is inferred in relation to entrepreneurial education that the more favorable the attitude and subjective norm, and the more the perceived control, the stronger should be the student's entrepreneurial intention. This study, therefore, adopts this theory to help explain the entrepreneurial intentions of undergraduate students of the University of Cape Coast. Entrepreneurship education in the country's tertiary institutions have been touted as one of the most effective means to enhancing entrepreneurial capacities and therefore self-employment, job creation (Ansah, 2012) and economic development (Napiers, 1972). Ansah (2012) asserts that tertiary education can provide some insights into the challenges of entrepreneurship and therefore encourage skills development and self-reliance. Education is critical to the development of Ghana's economy. However, the current curricula in Ghana's education system prepare the average graduate to seek for employment not create employment. There would numerous calls and emphasis on the quality of education administered to bridge the gap between academia and industry. Tertiary institutions in Ghana have made efforts to improve their curricula to motivate graduates entrepreneurially. It is against this background the University of Cape Coast introduced a compulsory course in entrepreneurship and new venture creation in the 2014/ 2015 academic year. By the end of the 2015/2016 academic year, a total of 2,971 students had gone through the course. The aim of this course was to expose students to the entrepreneurial climate and to build the entrepreneurial capacity and skills. This study was therefore conducted to assess the perception and the influence the course has had on their entrepreneurial intentions. Through the application of the theory of planned behavior by Ajzen (1991), this study explored the influence these cognitive factors: subjective norms, perceived behavioral control and attitude formation towards behavior have on entrepreneurial intentions of students undertaking the course. The theory of planned behavior describes and forecasts human behaviour of their intentions to perform an action. TPB constructs include attitude, subjective norm, and perceived behavioral control. Attitude towards entrepreneurial aim deals with an individual's favorable and unfavourable evaluations of the behavior. Subjective norm refers to the perceived social pressure from society. The third construct, perceived behavioral control is the perceived ease or difficulty in performing behaviour (Ajzen, 1991) ii Perceived Behavioural Control (PBC) and Entrepreneurial Intention Perceived behavioral control has an impact on intentions and actions as it deals with an individual's perception of the ease or difficulty of performing a particular behavior. Ajzen's (1991) study explores that perceived behavioral control improves intention about positive attitudes and subjective norms. According to Maes et al., (2014), PBC is a tenet of the person's perceived personal ease or difficulty in performing an entrepreneurial behavior. Thus, PBC is an antecedent to entrepreneurial intention. Perceived behavioral control is differentiated by internal beliefs and control beliefs. As iii # Subjective norms and entrepreneurial intention The third component of the theory of planned behavior is the subjective norm, defined as the individual's perception of the social pressures to engage or not to engage in behavior (Ajzen, 1991). This social pressure can come from peers, family, society or the workplace. The influence or effects of subjective norms on forming intention proved to be generally weak in some studies. Studies by Krueger, Reilly, & Carsrud (2000) showed that subjective norms do not correlate with entrepreneurial intentions. Ajzen (1991) tried to explain this weak relationship to the fact that intentions are influenced by personal factors, such as attitudes and perceived behavioral control. These conflicting results in the significance of the subjective norms variable have also In their study, they looked at subject norms from three distinct subjective norms and how each influenced behavioral intention. They found that subjective norms represented by peers are found to significantly moderate the relationship between attitude and intention toward the technology. However, their results do not show a significant effect of subjective norms represented by instructors and mass media on students' intentions to use the technology. Hence, it was hypothesized: H 3a : Subjective norm has no positive influence on entrepreneurial intentions. H 3b : Subjective norm has positive influence on entrepreneurial intentions. # III. Methods The purpose of this study was to analyze the perception of students about the course and assess the impact of the course on their entrepreneurial intention using Ajzen's Theory of Planned Behaviour. Hence, the study employed a descriptive research design. By the end of the 2015/2016 academic year, a total of 2,971 non-business students (arts, social sciences, education and physical sciences) had gone through the university-wide entrepreneurship course. Based on the consecutive sampling technique, a sample of 1,200 students participated in the study. This sampling technique is chosen because it considers all available subjects (even if the sample sie is achieved) to make the sample a better representation of the population. The questionnaire contained some negatively worded items to trace and reduce response bias. Reliability and validity tests were performed and presented in the results and discussion section of the paper. Data collection took place when the students were writing their end of semester examinations. The questionnaires were attached to exam questions. The questionnaires were self-administered and had a response rate of 87.58%. The statistical technique used was Partial Least Squares-Structural Equation Modelling (PLS-SEM). The data is analyzed with Smart PLS3 by Ringle, Wende, & Becker (2015) and Statistical Package for Social Science (SPSS 22). The SPSS was used for initial data cleaning including: recoding negatively worded items into positive items, checking for outliers among others (Hair et. al., 2014). An exciting aspect of SEM is that both structural and measurement equations are modeled pictorially to enable clear conceptualization of the theory under study (Wong, 2013). PLS-SEM is, as the name implies operates much like multiple regression that minimizes the residual variances of the endogenous constructs (Hair et al., 2011). # a) Structural Model and Estimation Procedure The structural model in PLS-SEM depicts the relationships among the latent variables based on the theoretical framework. The latent variable estimates are linear aggregates of their observed indicators, whose weights are obtained via the PLS estimation procedure as specified by the inner and outer models. Entrepreneurial Intentions represents the endogenous variable while the cognitive factors: subjective norms (SN), perceived behavioral control (PBC) and attitude towards behavior (ATT) represent the exogenous variables. As a measure of the entire goodness of fit of the structural equation, an overall coefficient of determination, R 2 , was used to calculate the stability of the model. In PLS, re-sampling procedures are used to assess the significance of PLS parameter estimates (hypothesis testing). The bootrapping procedure in Smart PLS was used to measure the impact of the path coefficients. # b) Research Method i Measures Primary data was employed adapting a questionnaire from Liñán, Rodríguez-Cohard, and Rueda-Cantuche, (2011) with some modifications. The questionnaire included items on the four main cognitive construct variables of the TPB. These were: subjective norm, perceived behavioral control, attitude towards behavior and intention. The items were measured on a 5-point Likert scale ranging from weak agreement to very strong agreement. ii Assessment of goodness of measures goodness of measures were reliability and validity. Calculation of reflective measurement models was necessary because the significance of path coefficients is weakened if data does not meet these quality criteria. In this study, we examined composite and individual reliabilities. The average variance extracted was also presented. Other advanced tests such as Fornell Larcker criterion, cross-loadings and Heterotrait-Monotrait Ratio were also carried out. Assessing the reliability and validity in PLS-SEM is particularly imperative when the measurement model is reflective (See figure 2). Reliability refers to the degree The two main criteria used for testing the to which a set of indicators are internally consistent, and the extent to which an instrument yields the same results upon repeated tests on the same population. In PLS-SEM, each indicators' reliability is displayed in the measurement model. So, it is easy to see indicators that have values below the standardized loading of 0.7, which become candidates for removal. However, caution and more judgment are taken. Hair, et al. (2014) outlines two key considerations; indicators with loadings between 0.40 and 0.70 should only be considered for deletion if removing them will boost the overall composite reliability above the suggested threshold of 0.7; and the extent to which deletion affects validity especially regarding content. From figure 2, indicators that achieved reliability value above 0.7 was retained and those below was deleted. In table 3, the reliability coefficient, both Cronbach's Alpha, and the composite reliability were all above 0.7 for all the latent constructs. iii Construct Validity The construct validity was explored by investigating its relationship with other constructs, both related (convergent validity) and unrelated (discriminant or divergent validity). # iv Convergent Validity It measures constructs that are supposed to be related. In other words, convergent validity assesses whether indicators measure only the underlying constructs and nothing else. In measuring convergent validity, each measurement item should have loadings above 0.708 and average variance extracted (AVE) of 0.50 or higher (Hair et al., 2011). The reason being that the construct should be able to explain at least 50% (0.5) of the variance of its indicators. AVE represents the average of the sum of squares of the individual loadings. Thus, for one to achieve AVE of 0.5, the minimum indicator loading should be 0.708. From table 3, the examination of the AVE showed that all the constructs had more than 50% of the variance in the indicators, and this is because indicator loadings were above 0.708. # v Discriminant Validity Discriminant validity tests the degree to which perceived constructs are unrelated. In this study, the Fornell Larcker criteria (Fornell & Larcker, 1981), Heterotrait-Monotrait Ratio (HTMT) and the crossloadings were examined for possible discriminant conditions. The Fornell Larcker criterion was checked on the basis that the square root of the AVE should be bigger than the correlations between the constructs and other constructs. The cross loading approach (see Table 5) to discriminant validity, according to Henseler et al., (2014) is determined when a construct indicator shows weak correlation with all other constructs except for the one to which it is theoretically associated. With the Fornell Larcker criteria, the square root of the AVE should be larger than the correlation between the underlying construct and other constructs. Put differently, the AVE should be greater than the squared correlation between the underlying construct and the other constructs in question. For example, from table 4, the AVE for attitude (A) is 0.636. The square root of 0.636 gives 0.797, which is bigger than 0.585, 0.559, and 0.452, the correlations between attitude and intention, perceived behavioral control and subjective norms respectively. From table 5, the indicators loaded higher on their corresponding constructs than other constructs. Thus, discriminant validity was achieved. Henseler et al., (2014) argue, however, that the Fornell Larcker criteria and assessment of cross-loadings are not sufficient to determine the discriminant validity of constructs. They proposed the use of Heterotrait-Monotrait ratio of correlations (HTMT) as a new approach to assess discriminant validity in variance-based SEM. In the HTMT, which is considered more robust, a final value close to one shows lack of discriminant validity. In effect, discriminant validity will exist if value less than 0.85 (Kline, 2011) or 0.9 (Gold, Malhotra & Segars, 2001) is obtained. Thus, the smaller the HTMT ratio, the better. From table 2, 582 of the respondents are males, representing 55.4%. On the other hand, we have 318 (30.3%) being females. Surprisingly, 151 (14.4%) respondents did not indicate their sex. # IV. Results # a) Respondents' Demographics # b) Attitude, Perceived Behavioural Control, and Subjective Norms among Respondents Using 1,050 valid respondents, findings from the study showed that most students (83%) agreed that entrepreneurship as a career option would give them great satisfaction. As a result, 86.4% of respondents reported being determined to create their ventures in the future with 81.1% feeling optimistic about their chances of being successful. Therefore, it appeared that most students in our sample had a positive attitude towards entrepreneurship regarding their perceived level of satisfaction, determination to pursue entrepreneurial ventures and chances of succeeding as entrepreneurs. Regarding subjective norms, most of the students sampled perceived that family would be more supportive of their entrepreneurial engagement than colleagues and friends. While 77.6 % agreed that family members would approve their decision to start a business, only 66.3% and 68.5% agreed that colleagues and friends respectively would support their entrepreneurial intentions. Concerning perceived behavioral control, a little above half of the respondents, specifically, 56.8%, 56.4%, and 57.9% agreed that entrepreneurship was a professional goal for them, they were ready to make any sacrifices to become entrepreneurs and had control over the creation process of a new firm respectively. Overall, findings showed high entrepreneurial intention among most of the respondents with about 72.7%, 75.3%, 81.2%, and 82.5% reporting not only to have a firm intention to start a business someday but also to have seriously thought about this, become determined to see it happen and willing to put in the necessary efforts to realize their # c) Hypotheses Testing Hypotheses for the study were tested using the path analysis approach (See figure 2). The path coefficients are the standardized beta of the independent variables. The bootstrapping procedure was used to test the significance of the path coefficients. The path coefficients show the direct effect of the independent variables on dependent variables in a path model. In table 7, the structural model path coefficients were depicted. These coefficients show the direction and strength of the relationship between the cognitive factors of the TPB and intention. A unit change in the construct 'Attitude towards the behavior' for example, leads to 0.321 change in entrepreneurial intention. Similarly, a unit change in the perceived behavioral control leads to 0.446 change in the variation of entrepreneurial intention and finally that of subjective norms achieved 0.032 change in intention. The path coefficients were all positive; however, its significance was depicted by the p-values. The relationship between attitude and intention was positive and significant at 1%. Thus, the hypothesis (H 1 ) failed to be rejected. The relationship between perceived behavioral control and intention is also positive and significant at 1%, consequently, the hypothesis (H 2 ) also failed to be rejected. However, the relationship between subjective norm and intention was positive but not statistically significant. # Sou rce: Field Work, 2016 The coefficient of determination (R 2 value) is a measure of the predictive ability and accuracy of the research model. The constant of the R-square depicts the combined effect of the exogenous latent variables on the endogenous constructs. In other words, the R 2 value shows the amount of variance in the endogenous construct explained by the exogenous constructs. In table 9, the adj. R 2 of 0.479 shows that attitude, perceived behavioral control and subjective norms jointly contribute to 0.48 (p<0.01) variance in intention. The F-square (f 2 ) represents the size of the effect of each of the exogenous constructs (attitude, subjective norms and perceived behavioral control) on the exogenous construct. In table 11, the effect size of attitude, perceived behavioral control and subjective norms are 0.117 (p<0.01), 0.263 (p<0.01) and 0.002 The main purpose of this study was to assess the impact of a university-wide entrepreneurship course introduced at the University of Cape Coast on the entrepreneurial intentions of non-business students using the theory of planned behavior. Results indicate (as shown in Table 7) that there was a significant (p>0.05) respectively. The test of whether the size was small, medium, and large is guided by Cohen's (1988) threshold for interpreting effect size. Consequently, the effect size of attitude (ATT) was medium, that of perceived behavioral control (PBC) was big and subjective norm (SN) was small. relationship between attitude (? = 0.321, p < 0.01) as well as perceived behavioral control (? = 0.446, p < 0.01) and entrepreneurial intentions; while the subjective norm dimension (? = 0.032, p > 0.05) showed a weak positive relationship with the endogenous construct, entrepreneurial intentions. These mean that students generally demonstrated strong positive attitudes and perceived behavioral control which translated into stronger entrepreneurial intentions. According to the study perceived behavioral control was found to have the highest impact on intentions and as Maes et al. (2014) explain, these include internal control beliefs which relate to the personal capabilities of a person (self-confidence, creativity and risk-taking) while external controls linked to situational control. The notion that attitude and perceived behavioral control is a good predictor of entrepreneurial intentions, as found in this study, mirrors findings in other studies conducted among students in other contexts (Souitaris et (Krueger, Reilly & Carsrud, (2000). The inconsistencies in the significance of the subjective norms variable may be because a part of the measurement items that measure the variable is already present in the desirability of undertaking a particular behavior variable (Susetyo & Lestari, 2014). To this end, Shook & Britiany (2010) explain that such non-significant relationship results between subjective norm and entrepreneurial intention may be due to specific characteristics associated with transitional and post-communist economies. Nevertheless, their argument is opposed by Naia et al. (2017) who report similar results but in a market-based economy with no history of communism. Thus they suggest that factors leading to these results are embedded in the individual respondents who may have a high locus of control that makes them not easily influenced by what society thinks. It is important to note that in our case, all of these reasons could apply. Overall results from the path model shown in figure 2 were significant, and the hypothesized antecedents (attitude, perceived behavioral control, subjective norms) explain 48% of the variation in entrepreneurial intentions. # VI. Conclusion The purpose of this study was to examine the impact of the entrepreneurship education on the entrepreneurial intentions of non-business students of the University of Cape Coast. From the literature review and based on the Ajzen (1991) Theory of Planned Behavior, three research hypotheses guided the study. Findings that attitude has a positive relationship with entrepreneurial intention suggests that the approach of the University of Cape Coast to focus its entrepreneurship program for non-business students on building entrepreneurial mind-sets is laudable. However, although findings from the study show that perceived behavioral control have the highest impact on entrepreneurial intention, the current program for non-business students does not aim to teach the development of internal control beliefs and personal characteristics that are compatible with entrepreneurship. Overall, the results revealed the introduction of the entrepreneurship course had created the required behavioral intention in students to start a new venture in line with the planned behavior theory. Through the knowledge gained from the course, students had reignited the motivation and reshaped their perception of entrepreneurship. Based on the Theory of Planned Behaviors and the results obtained thereof, entrepreneurial intentions of students will eventually result in venture creation behavior. However, for this entrepreneurial intention to be strong enough to transition to entrepreneurial activity, it is recommended that in-class activities aimed at fostering the development of personal characteristics such as selfconfidence and risk-taking propensity should be part of the delivery of the program. This study contributes to the literature on entrepreneurial education and intentions of students in the Ghanaian tertiary education. It also serves as a source of reference for similar studies to be replicated in other universities who may have introduced entrepreneurial education to non-business students for the first time. The study also provides policy-makers a step to reducing graduate unemployment. Thus, introducing entrepreneurial education in all higher institutions will eventually increase graduates entrepreneurial intentions with the right policies and systems to support graduate start-ups. The study sampled only non-business entrepreneurship students of the University of Cape Coast because it was a novel course introduced to such group as compared to the business students who already offered the entrepreneurship course. The questionnaire was administered after the students had gone through a semester course of entrepreneurship. Future research could look at a comparative study on entrepreneurial intention between the business and non-business students. A further research could also do a pre-assessment of the students' knowledge and entrepreneurial intentions and another after they have gone through the course to give any distinctions in attitude change if there be any. ![Maes et al. (2014) explain the internal control beliefs relate to the personal capabilities of a person (selfconfidence, creativity and risk-taking) while external control is related to situational control. Many studies including that of Souitaris et al. (2007) and Mumtaz et al. (2012) have found that behavioral control had a positive relationship with entrepreneurial intention. Hence it was hypothesized:](image-2.png "") Source: Ajzen (1991)Figure 1: Theory of Planned Behaviorb) Empirical Reviewi Attitude and entrepreneurial intentionAccording to Fishbein and Azjen (1975) attitudeis a learned predisposition to respond in a consistentlyfavorable or unfavorable manner concerning a givenobject. Thus, attitude towards a behavior reflects theindividual's global positive or negative evaluations ofperforming a particular behavior (Armitage & Conner,2001). Armitage and Conner further affirm that, the morefavorable the attitude towards the behavior, the strongerthe individual's intention to perform or act on it.This affirmation clearly explains that attitude andentrepreneurial intention relation are well established inthe theory of planned behavior. Thus, the extantliterature on attitude and entrepreneurial intention byapplying TPB is recognized widely. Studies such asthat of Indirti et al. (2010) noticed that students'attitude, behavior, and knowledge tend to stimulatetheir intentions and willingness to start a new venturein the future. Attitudes are open to change and canbe influenced by educators and by an environment(teaching)thatfosterentrepreneurialactivity(Florin, Karri, & Rossiter, 2007; Schwarz, Wdowiak,Almer-Jarz, & Breitenecker, 2009). Furthermore, Geissler& Zanger (2011) in a review also regard attitude as areliable predictor of entrepreneurial intention. Fromthose above, it was hypothesized:H 1 : attitude has a positive influence on entrepreneurialintentions. Attitude towardsbehaviourPerceived behavioural control Subjective Norm Hueros (2010) showed that subjective norms have a significant impact on behavioral intention. Cheung and Vogel (2013) in their acceptance H Similarly, studies by Arteaga Sánchez and Duarte of collaborative technologies, obtained mixed results.Intention3 Global Journal of Management and Business Research Volume XVIII Issue IX Version I Year ( ) A2 : Perceived behavioral control has a positive influence on entrepreneurial intentions. been 3Cronbach's AlphaRho_AComposite ReliabilityAverage Variance Extracted (AVE)Attitude towards behaviour (A)0.7150.7530.8390.636Intention (I)0.8500.8500.9000.693Perceived Behavioural Control (PBC)0.7650.7820.8650.682Subjective Norm (SN)0.8100.8250.8860.723Source: Field work, 2016 4Attitude towards behaviour (A)IntentionPerceived Behavioural Control (PBC)Subjective Norm (SN)Attitude towards Behaviour (A)0.797Intention (I)0.5850.832Perceived Behavioural Control (PBC)0.5590.6340.826Subjective Norm (SN)0.4520.3010.2780.850Source: Field Work, 2016 5Attitude towards behaviour (A)IntentionPerceived Behavioural Control (PBC)Subjective Norm (SN)ATT10.7810.4340.4730.339ATT30.8750.5640.4810.373ATT40.7300.3730.3790.381INT50.5210.7430.5360.288INT60.5050.8770.5200.243INT70.4830.8630.5400.248INT80.4250.8400.5080.216PBC20.4530.5630.8640.207PBC30.4830.5540.8740.218PBC40.4560.4460.7320.276SN10.3800.2110.2120.825SN20.3920.2910.2450.849SN30.3810.2540.2460.876Source: Field Work, 2016 6Attitude towards behaviour (A)IntentionPerceived Behavioural Control (PBC)Subjective Norm (SN)Attitude towards behaviour (A)Intention (I)0.731Perceived Behavioural Control (PBC)0.7570.782Subjective Norm (SN)0.5990.3540.357Source: Field Work, 2016 1Assessment of Entrepreneurship Education on Entrepreneurial Intentions: Evidence from Universityof Cape Coast2018Year6Volume XVIII Issue IX Version I( ) AGlobal Journal of Management and Business ResearchValid Missing System 18 -22 23 -27 28+ Total TotalAGE Frequency Percent 416 39.6 530 50.4 85 8.1 1031 98.1 20 1.9 1051 100.0 respondents' demographic characteristics. Valid Percent Cumulative Percent 40.3 40.3 51.4 91.8 8.2 100.0 100.0 Source: Field Work, 2016 Tables 1 and 2 provide a brief description of the© 2018 Global Journals 1 2SEXFrequency Percent Valid Percent Cumulative PercentMales58255.464.764.7ValidFemales31830.335.3100.0Total90085.6100.0Missing System15114.4Total1051100.0Source: Field Work, 2016 7CoefficientSample Mean (M)Standard Deviation (STDEV)T Statistics (|O/STDEV|)P Values 8R-SquareSample Mean (M)Standard Deviation (STDEV)T Statistics (|O/STDEV|)P ValuesIntention0.4800.4810.02916.4950.000 9Adj. R-squareSample Mean (M)Standard Deviation (STDEV)T Statistics (|O/STDEV|)P ValuesIntention0.4790.4790.02916.3970.000Source: Field Work, 2016 10F-SquareSample Mean (M)Standard Deviation (STDEV)T Statistics (|O/STDEV|)P Values The generally weak influence of subjectivenorms on entrepreneurial intention is not surprising.This is because, studies by other researchers onthe topic have found either a weak and non-significantpositive relationship like in our case (Stone, Jawahar, &Kisamore 2010; Iqbal, Melhem & Kokash, 2012),a negative correlation (Shook & Bratianu, 2010) orno relationship at all © 2018 Global Journals * Determinants of unemployment in Ghana WBaah -Boateng African Development Review 25 4 2013 * Entrepreneurship Education, a Panacea to Graduate Unemployment in Ghana? WOwusu -Ansah 2012 * Research on the State of Business Incubation Systems in Different Countries: Lessons for Uganda JMutambi JKByaruhanga LTrojer KBBuhwezi Technology, Innovation and Development 2 2 2010 African Journal of Science * Success and failure in foster care HNapier The British Journal of Social Work 2 2 1972 * The theory of planned behavior IAjzen Organizational Behavior and Human Decision Processes 50 1991 * Individual Entrepreneurial Intent: Construct Clarification and Development of an Internationally Reliable Metric ERThompson Doi: 10.1111/ j.1540-6520.2009. 00321.x Entrepreneurship Theory and Practice 33 3 2009 * Belief, attitude, intention, and behavior: An introduction to theory and research MFishbein IAjzen 1975 Addison-Wesley Reading, MA * Efficacy of the theory of planned behaviour: A meta-analytic review CJArmitage MConner British journal of social psychology 40 4 2001 * The effects of attitudes and perceived environment conditions on students' entrepreneurial intent: An Austrian perspective EJSchwarz MAWdowiak DAAlmer-Jarz RJBreitenecker Education + Training 51 4 2009 * CMRingle SWende JMBecker Smart PLS 3.Boenningstedt: Smart PLS GmbH 2015 * Attitude and Entrepreneurial Intention among Rural Community: The Mediating Role of Entrepreneurial Opportunity Recognition NDahalan MJaafar SA MRosdi SHS Web of Conferences EDP Sciences 2015 18 * Fostering Entrepreneurial Drive in Business Education: An Attitudinal Approach JFlorin RKarri NRossiter 10.1177/1052562905282023 Journal of Management Education 31 1 2007 * Gender differences in entrepreneurial intentions: A TPB multi-group analysis at factor and indicator level JMaes HLeroy LSels 10.1016/j.emj.2014.01.001 European Management Journal 32 5 2014 * Do entrepreneurship programmes raise entrepreneurial intention of science and engineering students? The effect of learning, inspiration and resources VSouitaris SZerbinati AAl-Laham Journal of Business Venturing 22 2007 * Competing models of entrepreneurial intentions NFKrueger MDReilly ALCarsrud Journal of Business Venturing 15 5-6 2000 * Entrepreneurial Intention among International Students: Testing a Model of Entrepreneurial Intention WLi 2006 University of Illinois at Arbana-Champaign Working Paper * Ethnic Entrepreneurship: Studying Chinesse and Indian Students in the United States WLi Journal of Developmental Entrepreneurship 12 2007 * Developing entrepreneurial intention model of university students: an empirical study on university students in Semarang Indonesia DSusetyo PSLestari International Journal of Engineering and Management Sciences 5 3 2014 * The influence of social ties and self-efficacy in forming entrepreneurial intentions and motivating nascent behavior JSequeira SLMueller JEMc Gee Journal of Developmental Entrepreneurship 12 03 2007 * Skill and Value Perceptions: How Do They Affect Entrepreneurial Intentions? FLinan International Entrepreneurship and Management Journal 4 2008 * Assessing Entrepreneurial Intentions amongst Students: A Comparative Study. Peer Reviewed Papers ABasu MVirick 2009 San Jose State University * Factors affecting entrepreneurial intention levels: A role for education. International entrepreneurship and management FLiñán JCRodríguez -Cohard JMRueda-Cantuche Journal 7 2 2011 * A primer on partial least squares structural equation modeling (PLS-SEM) JFHair GT MHult CMRingle MSarstedt 2014 Thousand Oaks; Sage * Partial Least Squares Structural Equation Modeling (PLS-SEM) Techniques using Smart PLS KKWong 10.1108/EBR-10-2013-0128 Marketing Bulletin 24 1 2013 * PLS-SEM: Indeed, a silver bullet JFHair CMRingle MSarstedt Journal of Marketing Theory and Practice 19 2 2011 * Evaluating structural equation models with unobservable variables and measurement error CFornell DFLarcker Journal of Marketing Research 18 1 1981 * JHenseler TKDijkstra MSarstedt CMRingle ADiamantopoulos DWStraub 2014 * Motivational factors that influence the acceptance of Moodle using TAM ArteagaSánchez R DuarteHueros A >10.1016/j.chb.2010.06.011 2010