CLLGApr 20, 2021

Identifying Helpful Sentences in Product Reviews

arXiv:2104.09792v3727 citations
AI Analysis

This addresses the need for concise decision-making in voice shopping, but it is incremental as it builds on multi-document summarization in a specific domain.

The paper tackles the problem of selecting a single helpful sentence from product reviews for voice shopping, proposing a model that extracts representative sentences with positive and negative sentiment and outperforms baselines.

In recent years online shopping has gained momentum and became an important venue for customers wishing to save time and simplify their shopping process. A key advantage of shopping online is the ability to read what other customers are saying about products of interest. In this work, we aim to maintain this advantage in situations where extreme brevity is needed, for example, when shopping by voice. We suggest a novel task of extracting a single representative helpful sentence from a set of reviews for a given product. The selected sentence should meet two conditions: first, it should be helpful for a purchase decision and second, the opinion it expresses should be supported by multiple reviewers. This task is closely related to the task of Multi Document Summarization in the product reviews domain but differs in its objective and its level of conciseness. We collect a dataset in English of sentence helpfulness scores via crowd-sourcing and demonstrate its reliability despite the inherent subjectivity involved. Next, we describe a complete model that extracts representative helpful sentences with positive and negative sentiment towards the product and demonstrate that it outperforms several baselines.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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