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NewsMTSC: A Dataset for (Multi-)Target-dependent Sentiment Classification in Political News Articles

Felix Hamborg, Karsten Donnay

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Abstract

Previous research on target-dependent sentiment classification (TSC) has mostly focused on reviews, social media, and other domains where authors tend to express sentiment explicitly. In this paper, we investigate TSC in news articles, a much less researched TSC domain despite the importance of news as an essential information source in individual and societal decision making. We introduce NewsMTSC, a high-quality dataset for TSC on news articles with key differences compared to established TSC datasets, including, for example, different means to express sentiment, longer texts, and a second test-set to measure the influence of multi-target sentences. We also propose a model that uses a BiGRU to interact with multiple embeddings, e.g., from a language model and external knowledge sources. The proposed model improves the performance of the prior state-of-the-art from F 1 m = 81.7 to 83.1 (real-world sentiment distribution) and from F 1 m = 81.2 to 82.5 (multi-target sentences).

Topics & Concepts

Sentiment analysisComputer scienceSocial mediaSet (abstract data type)Key (lock)Artificial intelligenceDomain (mathematical analysis)Measure (data warehouse)Natural language processingQuality (philosophy)Language modelData miningWorld Wide WebMathematicsComputer securityEpistemologyPhilosophyProgramming languageMathematical analysisSentiment Analysis and Opinion MiningTopic ModelingAdvanced Text Analysis Techniques