TL;DR
This paper introduces a new task of abstractive opinion tagging for e-commerce reviews, proposing a framework called AOT-Net that automatically generates ranked opinion tags from noisy, colloquial reviews, and releases a large dataset for research.
Contribution
The paper defines the abstractive opinion tagging task, proposes the AOT-Net framework, and provides a large-scale dataset, advancing automatic opinion summarization in e-commerce.
Findings
AOT-Net outperforms baseline models on the eComTag dataset.
The framework effectively handles noisy and colloquial review data.
The dataset facilitates future research in opinion tagging.
Abstract
In e-commerce, opinion tags refer to a ranked list of tags provided by the e-commerce platform that reflect characteristics of reviews of an item. To assist consumers to quickly grasp a large number of reviews about an item, opinion tags are increasingly being applied by e-commerce platforms. Current mechanisms for generating opinion tags rely on either manual labelling or heuristic methods, which is time-consuming and ineffective. In this paper, we propose the abstractive opinion tagging task, where systems have to automatically generate a ranked list of opinion tags that are based on, but need not occur in, a given set of user-generated reviews. The abstractive opinion tagging task comes with three main challenges: (1) the noisy nature of reviews; (2) the formal nature of opinion tags vs. the colloquial language usage in reviews; and (3) the need to distinguish between different…
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