Development and Application of Machine Learning Algorithms for Sentiment Analysis in Digital Manufacturing

Author:

Jain Vishal1ORCID,Mitra Archan2ORCID

Affiliation:

1. Sharda University, India

2. Presidency University, India

Abstract

Customer input has increased as digital manufacturing and smart factories advance. However, standard analysis methods struggle to turn this feedback into useful insights. This research study examined the use of machine learning (ML) sentiment analysis algorithms to improve digital manufacturing customer feedback interpretation. Machine learning, sentiment analysis, and digital industrialization theories underpin the research. Sentiment analysis may reveal nuanced consumer feedback insights that traditional methods miss, according to customer experience management and complex data analytics theories. A specially constructed ML system for sentiment analysis was used to real-world customer feedback data from numerous digital manufacturing enterprises in a case study. This method classified feedback sentiment using natural language processing. The program picked up small changes in client emotions that previous methods missed. These findings imply that machine learning-based sentiment analysis improves digital manufacturing customer feedback interpretation.

Publisher

IGI Global

Reference48 articles.

1. Machine Learning Sentiment Analysis in Detection System for Rupiah Currency Value Using SysML Language

2. Servitization of the manufacturing firm: Exploring the operations practices and technologies that deliver advanced services.;T.Baines;International Journal of Operations & Production Management,2017

3. A semi-supervised approach in detecting sentiment and emotion based on digital payment reviews

4. BishopC. M. (2006). Pattern Recognition and Machine Learning. Springer.

5. Cambria, E., Poria, S., Bajpai, R., & Schuller, B. (2017). SenticNet 4: A Semantic Resource for Multilingual Sentiment Analysis. In Proceedings of the 15th Conference of the European Chapter of the Association for Computational Linguistics (Vol. 2, pp. 675-680). Academic Press.

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