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Product Feature Mining: Semantic Clues versus Syntactic Constituents

机译:产品特征挖掘:语义线索与句法成分

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Product feature mining is a key subtask in fine-grained opinion mining. Previous works often use syntax constituents in this task. However, syntax-based methods can only use discrete contextual information, which may suffer from data sparsity. This paper proposes a novel product feature mining method which leverages lexical and contextual semantic clues. Lexical semantic clue verifies whether a candidate term is related to the target product, and contextual semantic clue serves as a soft pattern miner to find candidates, which exploits semantics of each word in context so as to alleviate the data sparsity problem. We build a semantic similarity graph to encode lexical semantic clue, and employ a convolutional neural model to capture contextual semantic clue. Then Label Propagation is applied to combine both semantic clues. Experimental results show that our semantics-based method significantly outperforms conventional syntax-based approaches, which not only mines product features more accurately, but also extracts more infrequent product features.
机译:产品特征挖掘是细化意见挖掘的关键子任务。先前的作品通常在此任务中使用语法成分。但是,基于语法的方法只能使用离散的上下文信息,这可能会导致数据稀疏。本文提出了一种新颖的利用词法和上下文语义线索的产品特征挖掘方法。词汇语义线索验证候选词是否与目标产品相关,上下文语义线索充当软模式挖掘者以查找候选词,该线索利用上下文中每个单词的语义来缓解数据稀疏性问题。我们建立了一个语义相似度图来对词汇语义线索进行编码,并采用卷积神经模型来捕获上下文语义线索。然后应用标签传播将两个语义线索结合起来。实验结果表明,基于语义的方法明显优于传统的基于语法的方法,该方法不仅可以更准确地挖掘产品特征,而且还可以提取较少见的产品特征。

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