Skip to content

zhiming817/Enhancing-E-commerce-Recommendations-Unveiling-Insights-from-Customer-Reviews-with-BERTFusionDNN

Repository files navigation

Enhancing E-commerce Recommendations: Unveiling Insights from Customer Reviews with BERTFusionDNN

Abstract

In the domain of e-commerce, customer reviews wield significant influence over business strategies. Despite the existence of various recommendation methodologies like collaborative filtering and deep learning, they often encounter difficulties in accurately analyzing sentiment and semantics within customer feedback. Addressing these challenges headon, this paper introduces BERTFusionDNN, a novel framework merging BERT for extracting textual features and a Deep Neural Network for integrating numerical features. We assess the efficacy of our approach using a Women Clothing ECommerce dataset, benchmarking it against established techniques. Our method adeptly extracts valuable insights from customer reviews, fortifying e-commerce recommendation systems by surmounting barriers associated with deciphering both textual nuances and numerical intricacies. Through this endeavor, we pave the way for more robust and effective strategies in leveraging customer feedback to optimize e-commerce experiences and drive business success.

Citation

APA

Zhao, Z., Zhang, N., Xiong, J., Feng, M., Jiang, C., & Wang, X. (2024). Enhancing E-commerce Recommendations: Unveiling Insights from Customer Reviews with BERTFusionDNN. Journal of Theory and Practice of Engineering Science, 4(02), 38-44.

BIB

@article{zhao2024enhancing,
  title={Enhancing E-commerce Recommendations: Unveiling Insights from Customer Reviews with BERTFusionDNN},
  author={Zhao, Zhiming and Zhang, Ning and Xiong, Jize and Feng, Mingyang and Jiang, Chufeng and Wang, Xiaosong},
  journal={Journal of Theory and Practice of Engineering Science},
  volume={4},
  number={02},
  pages={38--44},
  year={2024}
}

Authors

  1. @ Zhiming Zhao
  2. @ Ning Zhang
  3. @ Jize Xiong
  4. @ Mingyang Feng
  5. @ Chufeng Jiang
  6. @Xiaosong Wang

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 6