Attribute-Sentiment-Guided Summarization of User Opinions From Online Reviews

Author:

Han Yi1,Nanda Gaurav2,Moghaddam Mohsen3

Affiliation:

1. Northeastern University Department of Mechanical, and Industrial Engineering, , Boston, MA 02115

2. Purdue University School of Engineering Technology, , West Lafayette, IN 47907

3. Northeastern University Department of Mechanical and Industrial Engineering and Khoury, College of Computer Sciences, , Boston, MA 02115

Abstract

Abstract Eliciting informative user opinions from online reviews is a key success factor for innovative product design and development. The unstructured, noisy, and verbose nature of user reviews, however, often complicate large-scale need finding in a format useful for designers without losing important information. Recent advances in abstractive text summarization have created the opportunity to systematically generate opinion summaries from online reviews to inform the early stages of product design and development. However, two knowledge gaps hinder the applicability of opinion summarization methods in practice. First, there is a lack of formal mechanisms to guide the generative process with respect to different categories of product attributes and user sentiments. Second, the annotated training datasets needed for supervised training of abstractive summarization models are often difficult and costly to create. This article addresses these gaps by (1) devising an efficient computational framework for abstractive opinion summarization guided by specific product attributes and sentiment polarities, and (2) automatically generating a synthetic training dataset that captures various degrees of granularity and polarity. A hierarchical multi-instance attribute-sentiment inference model is developed for assembling a high-quality synthetic dataset, which is utilized to fine-tune a pretrained language model for abstractive summary generation. Numerical experiments conducted on a large dataset scraped from three major e-Commerce retail stores for apparel and footwear products indicate the performance, feasibility, and potentials of the developed framework. Several directions are provided for future exploration in the area of automated opinion summarization for user-centered design.

Funder

Directorate for Engineering

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

Reference91 articles.

1. Large-Scale Needfinding: Methods of Increasing User-Generated Needs From Large Populations;Schaffhausen;ASME J. Mech. Des.,2015

2. Benchmarking Best NPD Practices—III;Cooper;Res. Tech. Manage.,2004

3. The Innovation Navigator

4. Managing Effective Communication in Knitwear Design;Eckert;Des. J.,1999

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