Downloads
Download
Enhancing Organizational Performance: Harnessing AI and NLP for User Feedback Analysis in Product Development
This paper explores the application of AI and NLP techniques for user feedback analysis in the context of heavy machine crane products. By leveraging AI and NLP, organizations can gain insights into customer perceptions, improve product development, enhance satisfaction and loyalty, inform decision-making, and gain a competitive advantage. The paper highlights the impact of user feedback analysis on organizational performance and emphasizes the reasons for using AI and NLP, including scalability, objectivity, improved accuracy, increased insights, and time savings. The methodology involves data collection, cleaning, text and rating analysis, interpretation, and feedback implementation. Results include sentiment analysis, word cloud visualizations, and radar charts comparing product attributes. These findings provide valuable information for understanding customer sentiment, identifying improvement areas, and making data-driven decisions to enhance the customer experience. In conclusion, promising AI and NLP techniques in user feedback analysis offer organizations a powerful tool to understand customers, improve product development, increase satisfaction, and drive business success.
References
- De Vreede G-J, Briggs RO. A Program of Collaboration Engineering Research and Practice: Contributions, Insights, and Future Directions. Journal of Management Information Systems 2019; 36(1): 74–119.
- Leinonen J, Hämäläinen J, Juntti M. Performance Analysis of Downlink OFDMA Resource Allocation with Limited Feedback. IEEE Transactions on Wireless Communications 2009; 8(6): 2927–2937.
- Bistritz I, Leshem A. Efficient and Asymptotically Optimal Resource Block Allocation. In Proceedings of the 2018 IEEE Wireless Communications and Networking Conference (WCNC), Barcelona, Spain, 15–18 April 2018.
- Francis J, Mehta NB, Ananya S. Best–M Feedback in OFDM: Base–Station–Side Estimation and System Implications. IEEE Transactions on Wireless Communications 2016; 15(5): 3616–3627.
- Ali N, Hong JE, Chung L. Social Network Sites and Requirements Engineering: A Systematic Literature Review. Journal of Software: Evolution and Process 2021; 33(4): e2332.
- Dąbrowski J, Letier E, Perini A, Susi A. Finding and Analyzing App Reviews Related to Specific Features: A Research Preview. In Proceedings of the 25th International Conference on Requirements Engineering: Foundation for Software Quality, Essen, Germany, 18–21 March 2019.
- Qiu Y, Wang J. A Machine Learning Approach to Credit Card Customer Segmentation for Economic Stability. In Proceedings of the 4th International Conference on Economic Management and Big Data Applications, ICEMBDA 2023, Tianjin, China, 27–29 October 2023.
- Zhao F, Yu F. Enhancing Multi–Class News Classification through Bert–Augmented Prompt Engineering in Large Language Models: A Novel Approach. In Proceedings of the 10th International scientific and practical conference “Problems and prospects of modern science and education”, Stockholm, Sweden, 12–15 March 2024.
- Zhao F, Yu F, Trull T, Shang Y. A New Method Using LLMs for Keypoints Generation in Qualitative Data Analysis. In Proceedings of the 2023 IEEE Conference on Artificial Intelligence (CAI), Santa Clara, CA, USA, 5–6 June 2023.
- Ye M, Zhou H, Yang H, Hu B, Wang X. Multi–Strategy Improved Dung Beetle Optimization Algorithm and Its Applications. Biomimetics 2024; 9(5): 291.
- Kujala S. Effective User Involvement in Product Development by Improving the Analysis of User Needs. Behaviour & Information Technology 2008; 27(6): 457–473.
- Bragge J, Merisalo–Rantanen H, Hallikainen P. Gathering Innovative End–User Feedback for Continuous Development of Information Systems: A Repeatable and Transferable E–Collaboration Process. IEEE Transactions on Professional Communication 2005; 48(1): 55–67.
- Cvitanovic C, Hobday AJ, van Kerkhoff L, Wilson SK, Dobbs K, Marshall NA. Improving Knowledge Exchange Among Scientists and Decision–Makers to Facilitate the Adaptive Governance of Marine Resources: a Review of Knowledge and Research Needs. Ocean & Coastal Management 2015; 112: 25–35.
- Gensler S, Völckner F, Egger M, Fischbach K, Schoder D. Listen to Your Customers: Insights into Brand Image Using Online Consumer–Generated Product Reviews. International Journal of Electronic Commerce 2015; 20(1): 112–141.
- Intezari A, Gressel S. Information and Reformation in KM Systems: Big Data and Strategic Decision–Making. Journal of Knowledge Management 2017; 21(1): 71–91.
- Li S, Kou P, Ma M, Yang H, Huang S, Yang Z. Application of Semi–Supervised Learning in Image Classification: Research on Fusion of Labeled and Unlabeled Data. IEEE Access 2024; (99): 1–1.
- Liu Q, Du Q, Hong Y, Fan W, Wu S. User Idea Implementation in Open Innovation Communities: Evidence from a New Product Development Crowdsourcing Community. Information Systems Journal 2020; 30(5): 899–927.
- He W, Wu H, Yan G, Akula V, Shen J. A Novel Social Media Competitive Analytics Framework with Sentiment Benchmarks. Information & Management 2015; 52(7): 801–812.
- Pomputius A. Can You Hear Me Now? Social Listening as a Strategy for Understanding User Needs. Medical Reference Services Quarterly 2019; 38(2): 181–186.
- Zhang Y, Vásquez C. Hotels׳ Responses to Online Reviews: Managing Consumer Dissatisfaction. Discourse, Context & Media 2014; 6: 54–64.
- Manser T. Teamwork and Patient Safety in Dynamic Domains of Healthcare: a Review of the Literature. Acta Anaesthesiologica Scandinavica 2009; 53(2): 143–151.
- Orton S, Yu F, Flores L, Marra R. Student Perceptions of Confidence in Learning and Teaching Before and After Teaching Improvements. In Proceedings of the 2023 ASEE Annual Conference, Baltimore, MD, USA, 25–28 June 2023.
- Yu F, Milord JO, Flores LY, Marra R. Work in Progress: Faculty Choice and Reflection on Teaching Strategies to Improve Engineering Self–Efficacy. In Proceedings of the 2022 ASEE Annual Conference, Minneapolis, MN, USA, 26–29 June 2022.
- Zhang SXH. A Multi–model Fusion Strategy for Android Malware Detection Based on Machine Learning Algorithms. Journal of Computer Science Research 2024; 6(2): 7–17.
- Elgendy N, Elragal A. Big Data Analytics: a Literature Review Paper. In Proceedings of the Advances in Data Mining. Applications and Theoretical Aspects: 14th Industrial Conference, ICDM 2014, St. Petersburg, Russia, 16–20 July 2014.
- Wang Z, Wang L, Ji Y, Zuo L, Qu S. A Novel Data–Driven Weighted Sentiment Analysis Based on Information Entropy for Perceived Satisfaction. Journal of Retailing and Consumer Services 2022; 68: 103038.
- McGrath RG. Business Models: A Discovery Driven Approach. Long Range Planning 2010; 43(2–3): 247–261.
- Li M, He J, Jiang G, Wang H. Ddn–Slam: Real–Time Dense Dynamic Neural Implicit Slam with Joint Semantic Encoding. 2024. arXiv:2401.01545.
- Qiu Y. Estimation of Tail Risk Measures in Finance: Approaches to Extreme Value Mixture Modeling; Johns Hopkins University: Baltimore, MD, USA, 2019.
- Wang H, Zhou Y, Pérez E, Römer F. Jointly Learning Selection Matrices for Transmitters, Receivers and Fourier Coefficients in Multichannel Imaging. In Proceedings of the ICASSP 2024–2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Seoul, Korea, 14–19 April 2024.
- Jusoh R, Parnell JA. Competitive Strategy and Performance Measurement in the Malaysian Context: An Exploratory Study. Management Decision 2008; 46(1): 5–31.
- Rathore B. Digital Transformation 4.0: Integration of Artificial Intelligence & Metaverse in Marketing. Eduzone: International Peer Reviewed/Refereed Multidisciplinary Journal 2023; 12(1): 42–48.
- Dai W, Fatahizadeh M, Touchaei HG, Moayedi H, Foong LK. Application of Six Neural Network–Based Solutions on Bearing Capacity of Shallow Footing on Double–Layer Soils. Steel and Composite Structures 2023; 49(2): 231–244.
- Liu Y, Bao Y. Intelligent Monitoring of Spatially–Distributed Cracks Using Distributed Fiber Optic Sensors Assisted by Deep Learning. Measurement 2023; 220: 113418.
- Liu Y, Bao Y. Automatic Interpretation of Strain Distributions Measured from Distributed Fiber Optic Sensors for Crack Monitoring. Measurement 2023; 211: 112629.
- Cambria E, White B. Jumping NLP Curves: A Review of Natural Language Processing Research. IEEE Computational Intelligence Magazine 2014; 9(2): 48–57.
- Balahur A, Mihalcea R, Montoyo A. Computational Approaches to Subjectivity and Sentiment Analysis: Present and Envisaged Methods and Applications. Computer Speech & Language 2014; 28: 1–6.
- Joseph SR, Hlomani H, Letsholo K, Kaniwa F, Sedimo K. Natural Language Processing: A Review. International Journal of Research in Engineering and Applied Sciences 2016; 6(3): 207–210.
- Patton DU, Frey WR, McGregor KA, Lee F–T, McKeown K, Moss E. Contextual Analysis of Social Media: The Promise and Challenge of Eliciting Context in Social Media Posts with Natural Language Processing. In Proceedings of the 2020 AAAI/ACM Conference on AI, Ethics, and Society, New York, NY, USA, 7–9 February 2020.
- Mills MT, Bourbakis NG. Graph–Based Methods for Natural Language Processing and Understanding—A Survey and Analysis. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 2013; 44(1): 59–71.
- Hao Y, Chen Z, Jin J, Sun X. Joint Operation Planning of Drivers and Trucks for Semi–Autonomous Truck Platooning. Transportmetrica A: Transport Science 2023; 1–37. DOI: 10.1080/23249935.2023.2266041.
- Hao Y, Chen Z, Sun X, Tong L. Planning of Truck Platooning for Road–Network Capacitated Vehicle Routing Problem. 2024. arXiv:2404.13512.
- Baclic O, Tunis M, Young K, Doan C, Swerdfeger H, Schonfeld J. Artificial Intelligence in Public Health: Challenges and Opportunities for Public Health Made Possible by Advances in Natural Language Processing. Canada Communicable Disease Report 2020; 46(6): 161.
- Khosravi B, Rouzrokh P, Erickson BJ. Getting More Out of Large Databases and EHRs with Natural Language Processing and Artificial Intelligence: the Future is Here. JBJS 2022; 104(Suppl 3): 51–55.
- Dhaoui C, Webster CM, Tan LP. Social Media Sentiment Analysis: Lexicon Versus Machine Learning. Journal of Consumer Marketing 2017; 34(6): 480–488.
- Shakhovska K, Shakhovska N, Veselý P. The Sentiment Analysis Model of Services Providers’ Feedback. Electronics 2020; 9(11): 1922.
- Li L, Li Z, Guo F, Yang H, Wei J, Yang Z. Prototype Comparison Convolutional Networks for One–Shot Segmentation. IEEE Access 2024; 12: 54978–54990.
- Pan Y, Zhang L. Roles of Artificial Intelligence in Construction Engineering and Management: A Critical Review and Future Trends. Automation in Construction 2021; 122: 103517.
- Dai W. Evaluation and Improvement of Carrying Capacity of a Traffic System. Innovations in Applied Engineering and Technology 2022; 1(1): 1–9.
- Dai W. Design of Traffic Improvement Plan for Line 1 Baijiahu Station of Nanjing Metro. Innovations in Applied Engineering and Technology 2023; 2(1): 1–11.
- Qiu Y. Financial Deepening and Economic Growth in Select Emerging Markets with Currency Board Systems: Theory and Evidence. 2024. arXiv:2406.00472.
- Lei J. Efficient Strategies on Supply Chain Network Optimization for Industrial Carbon Emission Reduction. 2024. arXiv:2404.16863.
- Zhou Y, Osman A, Willms M, Kunz A, Philipp S, Blatt J, EuL S. Semantic Wireframe Detection. Ndt net DGZfP 2023; 2023: 1–20.
- Xiong S, Chen X, Zhang H. Deep Learning–Based Multifunctional End–to–End Model for Optical Character Classification and Denoising. Journal of Computational Methods in Engineering Applications 2023; 3(1): 1–13.
- Ravi K, Ravi V. A Survey on Opinion Mining and Sentiment Analysis: Tasks, Approaches and Applications. Knowledge–Based Systems 2015; 89: 14–46.
- Lak P, Turetken O. Star Ratings Versus Sentiment Analysis––a Comparison of Explicit and Implicit Measures of Opinions. In Proceedings of the 2014 47th Hawaii International Conference on System Sciences, Waikoloa, HI, USA, 6–9 January 2014.
- Fu B, Lin J, Li L, Faloutsos C, Hong J, Sadeh N. Why People Hate Your App: Making Sense of User Feedback in a Mobile App Store. In Proceedings of the 19th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, Chicago, IL, USA, 11–14 August 2013.
Supporting Agencies
- Funding: Not applicable.