面向跨域情感分析的双向特征转移

Tareq Al-Moslmi, M. Albared, Adel Al-Shabi, S. Abdullah, N. Omar
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引用次数: 1

摘要

随着基于用户的网络内容的发展,人们自然而自由地在许多领域分享他们的观点。然而,这将导致为许多领域标记训练数据的巨大成本,并阻止我们利用跨领域的共享信息。因此,由于特征和极性分歧,跨域情感分析是一项具有挑战性的NLP任务。这项工作的主要目的是自动创建一个双向词库,该词库可用于转移源域和目标域的特征向量。本文旨在设计一种特征转移算法,在源域和目标域之间选择和转移具有信息量和代表性的特征。此外,为了评估所提出的模型,进行了多次实验,并将结果与类似的已知基线方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bidirectional Feature Transfer for Cross-Domain Sentiment Analysis
With the evolution of user-based web content, people naturally and freely share their opinion in numerous domains. However, this would result in a massive cost to label training data for many domains and prevent us from taking advantage of the shared information across domains. As a result, cross-domain sentiment analysis is a challenging NLP task due to feature and polarity divergence. The main aim of this work is to automatically create a bidirectional thesaurus which could be used to transfer feature vectors of the source and target domains. This paper aims at designing an algorithm of feature transfer to select and transfer the informative and representative features between the source and target domains. Furthermore, several experiments were conducted in order to evaluate the proposed model, and the results were compared to similar known baseline methods.
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