Thursday, April 2, 2020
Computer R Us Company
  Introduction The Computer R Us Company received numerous complaints about the services offered in their CompleteCare division.Advertising      We will write a custom case study sample on Computer R Us Company specifically for you           for only $16.05 $11/page              Learn More   After thorough investigations into the complaints, the management established that the division was experiencing problems as a result of inadequacy of trained operators and problems with distribution and availability of parts. In response to these problems, the management came up with four initiatives that aimed at improving customer satisfaction. In this paper, analysis will be carried using various tools to establish the effectiveness of the initiatives that were put in place. Research design Sampling technique This research was conducted using research survey study approach. Data was collected using a questionnaire that had three sections. The first part required personal information, that is, a   ge and gender. In the second section a Likert scale of ten points was used to collect some data. The final section focused on determinants of customer satisfaction. Four questions were asked in this section and each had a Likert scale of ten points. The random sampling technique was used to select a sample of 500 customers (Kothari, 2004). The questionnaires were sent to the 500 customers and only 420 responded. In order to collect the data necessary for this study, several steps will be taken to ensure that appropriate care is taken to protect the participants. There are no universally accepted determinants of customer satisfaction ((Verbeek, 2008). Besides, the results of previous studies do not give conclusive result on the most effective determinant. Therefore, the attributes used by the management of Computer R Us to improve the level of customer satisfaction are a sample of what other companies use (Zikmund, Babin, Carr, Griffin, 2012).Advertising      Looking for case study o   n business  economics? Let's see if we can help you! Get your first paper with 15% OFF        Learn More   Analysis The first test show that the overall satisfaction is statistically different from 6 out of 10. The calculated mean is 4.4881 and it is less than the goal. The result of the second question shows that the overall satisfaction of female customers is higher than that of male customers. Therefore, there is a need to improve the level of satisfaction of the male customers. The results of the third question indicate that there is no difference in the level of satisfaction across the different age groups. Further, tests on question five shows that there is no difference in gender composition across the five age groups. The fifth test reveals that customers tend to be more satisfied with the loyalty rewards program than response times in the CompleteCare division. Therefore, the management needs to improve the response time in the division. The final test shows that all the fo   ur initiatives have a potential of improving customer satisfaction. Further, response time of the CompleteCare division and level of advice CompleteCare staff provides on Computers R Us products have more impact than the other two initiatives (Baltagi, 2011). Recommendations The results of hypothesis testing show that the management did not achieve their goal. For the company to achieve the target of 6 out of 10, the management needs to consider the recommendations listed below.  Decrease the response time of the CompleteCare division. This can be achieved by increasing the number of well trained personnel and equipment that can facilitate service delivery at the division. The company should introduce a rating system that can be used by customers continuously. The management should also focus on improving the level of satisfaction of the male customers. The management should train the CompleteCare staff on a continuous basis. This will improve the quality of advice they give clients   .  References Baltagi, G. (2011). Econometrics. New York: Springer Publisher Kothari, J. (2004). Research methodology: methods and techniques. New Delhi: New Age International (P) Limited Publishers.Advertising      We will write a custom case study sample on Computer R Us Company specifically for you           for only $16.05 $11/page              Learn More   Verbeek, M. (2008). A guide to modern econometrics. England: John Wiley  Sons. Zikmund, W., Babin, B., Carr, J., Griffin, M. (2012). Business research methods. USA: Cengage Learning. Appendix: Hypothesis testing Does the current level of customer satisfaction differ from managementââ¬â¢s goal of 6 out of 10? Hypothesis H0: The current level of customer satisfaction = 6. H1: The current level of customer satisfaction âⰠ  6. Statistical technique In this case a one sample t-test will be used to test the hypothesis. Justification One sample t-test is most suitable for evaluating a hypothesis that compares the actual mean    and hypothesized mean. Results of the test     Variable 1 Variable 2   Mean 4.488095238 6   Variance 5.505824526 0   Observations 420 420   Pearson Correlation     Hypothesized Mean Difference 0    df 419    t Stat -13.20498454    P(T=t) one-tail 7.85063E-34    t Critical one-tail 1.64849841    P(T=t) two-tail 1.57013E-33    t Critical two-tail 1.965641842         t Stat -13.20498454    t Critical two-tail 1.965641842    P(T=t) two-tail 1.57013E-33     Interpretation The results show that t-calculated is greater than t-critical. Also, the p-value (1.57013E-33) is less than alpha (5%). Therefore, the null hypothesis will be rejected at the 95% confidence level. This implies that the current level of customer satisfaction differ from managementââ¬â¢s goal of 6 out of 10.Advertising      Looking for case study on business  economics? Let's see if we can help you! Get your first paper with 15% OFF        Learn More   Is there any difference between the overall satisfaction of male and female customers at Computers R Us? Hypothesis H0: Overall satisfaction of male customers = overall satisfaction of female customers at computer R Us. H1: Overall satisfaction of male customers âⰠ  overall satisfaction of female customers at computer R Us. Statistical technique In this case, a paired sample t-test will be used to test the hypothesis. Justification A paired sample t-test is the most suitable for testing hypothesis that compared the mean of two related variables. Results of the test t-Test: Two-Sample Assuming Equal Variances     Female Male   Mean 3.589430894 5.75862069   Variance 4.27564294 4.507873231   Observations 246 174   Pooled Variance 4.371757391    Hypothesized Mean Difference 0    Df 418    t Stat -10.47338477    P(T=t) one-tail 2.98994E-23    t Critical one-tail 1.648507149    P(T=t) two-tail 5.97988E-23    t Critical two-tail 1.965655464     Interpretation In the results, the mean a   nd variance of overall satisfaction for the male is greater than that of the female group. Further, t-calculated is greater than t-critical. Also, the p-value is less than alpha (5%). Therefore, the null hypothesis will be rejected at the 95% confidence level. This implies that there is a difference between the overall satisfaction of male and female customers of the company. Are there any differences in the overall customer satisfaction across the following age groups: under 20, 21-30, 31-40, 41-50, 51 and over? Hypothesis H0: There is no difference in the overall satisfaction across the various age groups. H1: The overall satisfaction of at least one age group is different from the others. Statistical technique In this case, analysis of variance (ANOVA) will be used to test the hypothesis. Justification ANOVA is the most suitable technique for testing hypothesis that entails comparing mean for more than one group. One way ANOVA will be used because there is only one independent va   riable. Results of the test    Anova: Single Factor         SUMMARY         Groups Count Sum Average Variance     Under 20 47 180 3.829787 6.579093432     21-30 109 501 4.59633 6.150356779     31-40 105 466 4.438095 5.786996337     41-50 107 485 4.53271 4.647504849     over 50 52 253 4.865385 4.236425339     ANOVA         Source of Variation SS df MS F P-value F crit   Between Groups 29.52282 4 7.380705 1.344941124 0.252492 2.393438   Within Groups 2277.418 415 5.487753               Total 2306.94 419        Interpretation In the results above, the value of F-calculated is less than the F-critical. Besides, the p-value is greater than alpha (5%). Therefore, the null hypothesis will not be rejected at the 95% confidence level. This implies that there is no difference in the overall satisfaction across the various age groups. Are there any differences in the gender compositions across the five age groups? Hypothesis H0: There are no differences in gender composition across the five ag   e groups. H1: Gender composition is different in at least one of the age groups. Statistical technique Analysis of variance (ANOVA) will be used to test the hypothesis. Justification ANOVA is the most suitable technique for testing hypothesis that entail comparing mean for more than one group. One way ANOVA will be used because there is only one independent variable (Verbeek, 2008). Results of the test    Anova: Single Factor         SUMMARY         Groups Count Sum Average Variance     Under 20 47 20 0.425532 0.249769     21-30 109 47 0.431193 0.247537     31-40 105 43 0.409524 0.244139     41-50 107 41 0.383178 0.238582     over 50 52 23 0.442308 0.251508     ANOVA         Source of Variation SS df MS F P-value F crit   Between Groups 0.18386 4 0.045965 0.18751 0.944872 2.393438   Within Groups 101.7304 415 0.245134      Total 101.9143 419        Interpretation In the results above, the value of F-calculated is less than the F-critical. Besides, the p-value is greater than alpha (   5%). Therefore, the null hypothesis will not be rejected at the 95% confidence level. This implies that there are no differences in gender composition across the five age groups. Is there any difference in customer satisfaction based upon ââ¬Ëresponse times in the CompleteCare divisionââ¬â¢ and the ââ¬Ëloyalty rewards programââ¬â¢? Hypothesis H0: Customer satisfaction based upon response times in the CompleteCare division = the customer satisfaction based upon loyalty reward program. H1: Customer satisfaction based upon response times in the CompleteCare division âⰠ  the customer satisfaction based upon loyalty reward program. Statistical technique In this case, a paired sample t-test will be used to test the hypothesis. Justification A paired sample t-test is the most suitable for testing hypothesis that compared the mean of two related variables (Verbeek, 2008). Results of the test    t-Test: Paired Two Sample for Means      Response time Loyalty reward program   M   ean 3.242857143 5.645238095   Variance 4.222502557 7.842817366   Observations 420 420   Pearson Correlation -0.011950135    Hypothesized Mean Difference 0    Df 419    t Stat -14.09404771    P(T=t) one-tail 1.69112E-37    t Critical one-tail 1.64849841    P(T=t) two-tail 3.38224E-37    t Critical two-tail 1.965641842     Interpretation The results show that t-calculated is greater than t-critical. Also, the p-value is less than alpha (5%). Therefore, the null hypothesis will be rejected at the 95% confidence level. This implies that there are differences in customer satisfaction based upon response times in the CompleteCare division and the loyalty rewards program. Are any of the initiatives proposed by management related to the overall satisfaction of Computers R Us customers? Hypothesis H0: The initiatives proposed by the management are determinants of the overall satisfaction of Computer R Us customers. H1: The initiatives proposed by the management are not determinants of the ov   erall satisfaction of Computer R Us customers Statistical technique In this case, a multiple regression analysis will be used. Justification Multiple regression analysis is used to model the relationship between one dependent variable and other explanatory variables. Results of the test    SUMMARY OUTPUT           Regression Statistics          Multiple R 0.965602191          R Square 0.932387592          Adjusted R Square 0.931735906          Standard Error 0.613066164          Observations 420          ANOVA            Df SS MS F Significance F      Regression 4 2150.962676 537.7407 1430.732 3.3062E-241      Residual 415 155.9778006 0.37585        Total 419 2306.940476          Coefficients Standard Error t-Stat P-value Lower 95% Upper 95% Lower 95.0% Upper 95.0%   Intercept 0.896561298 0.103883791 8.630425 1.32E-16 0.69235727 1.10076533 0.69235727 1.100765326   Response time 0.86471784 0.03836737 22.53785 4.92E-74 0.789299227 0.94013645 0.789299227 0.940136454   Level of advice 0   .271037316 0.041145932 6.58722 1.36E-10 0.190156892 0.35191774 0.190156892 0.351917739   Level of communication -0.01775345 0.021480889 -0.82648 0.409009 -0.05997837 0.02447146 -0.05997836 0.024471457   Loyalty reward program 0.007973903 0.010696359 0.745478 0.456405 -0.01305189 0.0289997 -0.01305189 0.0289997    Interpretation The F-test will be used to test the overall significance of the regression model. The p-value for the F ââ¬â test is less than alpha (0.05). Therefore, reject the null hypothesis and conclude that the four determinants are significant determinants of the overall customer satisfaction. Further, the p-value for response time and level of advice are greater than alpha (0.05). This implies that they are significant determinants of overall customer satisfaction of the company.                                               This case study on Computer R Us Company was                  written and submitted by user Allison H. to help                  you with your own studies. You are free to use it for research and reference purposes in order to write                  your own paper; however, you must cite it accordingly.                You can donate your paper here.    
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