Customer Satisfaction Analysis of Online Taxi Mobile Apps

Customer Satisfaction Analysis of Online Taxi Mobile Apps

Army Justitia;Rini Semiati;Nadhila Ramadhini Ayuvinda;
journal of information systems engineering and business intelligence 2019 Vol. 5 pp. 85--92
325
justitia2019customerjournal

Abstract

Background: High number of complaints that have been filed about the performance of online taxi services has prompted research on customer satisfaction factor analysis. Substantial research has addressed customer satisfaction factors in online taxi services, but none of them investigated the satisfaction in using the mobile apps. Objective: This study aims to find out the level of customer satisfaction and customer satisfaction factors in the online taxi mobile app services. Methods: This study is quantitative in nature, using questionnaires and purposive sampling method. The Customer Satisfaction Index (CSI) and Important-Performance Analysis (IPA) were used to determine the customer satisfaction factors, with the variables being route detection, connection, interaction, content, and service quality; as well as customer satisfaction, customer’s complaint, and customer loyalty. The data was processed using SPSS software. Results: The results showed that the level of customer satisfaction was 76.117% and fell into Cause of Concern category. This means that the system performance did not meet customer expectations. The results also showed that the best three factors in online taxi mobile apps are route detection, interaction, and content quality. Meanwhile, the factors that caused customer dissatisfaction were connection and service quality. The variables that led to satisfaction need to be maintained and the variables that did not were in Quadrant 1. Conclusion: The customer satisfaction was low so it is advisable that the companies immediately take an action to improve their performance and revise their strategic planning. In doing so, they must prioritize the attributes which have the biggest gap because these are the ones that will improve customer satisfaction.

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ID: 11741
Ref Key: justitia2019customerjournal
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11741
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10.20473/jisebi.5.1.85-92
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