Inicio  /  Algorithms  /  Vol: 17 Par: 2 (2024)  /  Artículo
ARTÍCULO
TITULO

Enhancing Product Design through AI-Driven Sentiment Analysis of Amazon Reviews Using BERT

Mahammad Khalid Shaik Vadla    
Mahima Agumbe Suresh and Vimal K. Viswanathan    

Resumen

Understanding customer emotions and preferences is paramount for success in the dynamic product design landscape. This paper presents a study to develop a prediction pipeline to detect the aspect and perform sentiment analysis on review data. The pre-trained Bidirectional Encoder Representation from Transformers (BERT) model and the Text-to-Text Transfer Transformer (T5) are deployed to predict customer emotions. These models were trained on synthetically generated and manually labeled datasets to detect the specific features from review data, then sentiment analysis was performed to classify the data into positive, negative, and neutral reviews concerning their aspects. This research focused on eco-friendly products to analyze the customer emotions in this category. The BERT and T5 models were finely tuned for the aspect detection job and achieved 92% and 91% accuracy, respectively. The best-performing model will be selected, calculating the evaluation metrics precision, recall, F1-score, and computational efficiency. In these calculations, the BERT model outperforms T5 and is chosen as a classifier for the prediction pipeline to predict the aspect. By detecting aspects and sentiments of input data using the pre-trained BERT model, our study demonstrates its capability to comprehend and analyze customer reviews effectively. These findings can empower product designers and research developers with data-driven insights to shape exceptional products that resonate with customer expectations.

 Artículos similares

       
 
Kuen-Suan Chen, Song-Chang Lin, Kuei-Kuei Lai and Wen-Pai Wang    
According to numerous studies, various parts processed by machine tools usually have multiple-quality characteristics at the same time. Moreover, the process capability index is a handy and useful tool for assessing various quality characteristics. In or... ver más
Revista: Applied Sciences

 
Mostafa Bokharaeian, Taghi Ghoorchi, Abdolhakim Toghdory and Iman Janghorban Esfahani    
Livestock significantly contribute to greenhouse gas emissions, with methane production from animals like cows, sheep, and goats being a major concern. Reducing this methane output is crucial for environmental sustainability. There is also a growing inte... ver más
Revista: Applied Sciences

 
Benedikt Badanik, Rebeka Remenysegova and Antonin Kazda    
This paper focuses on the analysis of traditional methods of service quality evaluation and represents a new sentimental approach to airline service quality evaluation employing user-generated content. It identifies aspects of airline service that passen... ver más
Revista: Aerospace

 
Thuy Duy Truong, Nguyen Huu Loc Khuu, Quoc Dien Le, Tran Thanh Cong Vu, Hoa Binh Tran and Tuong Quan Vo    
Research and development on a global scale have been conducted on overhead hoist transportation systems (OHTSs) in recent years. The majority of these systems are utilized in manufacturing facilities that are either semiautomated or fully automated. By u... ver más
Revista: Applied Sciences

 
Nuri Aslami, M.Si,Kevin Mifthah Hadi Lubis     Pág. 29 - 35
Abstract? This study's findings include a marketing strategy, specifically the marketing of PMG-ASN Motorbike Murbahah financing products, implemented by PT. Bank Sumut during the Covid 19 pandemic, which includes several strategies, namely: picking up b... ver más