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A Cyclic Cascaded CRFs Model for Opinion Targets Identification Based on Rules and Statistics

机译:基于规则和统计的循环级联CRFs用于舆论目标识别

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Opinion sentences on e-commerce platform, microblog and forum contain lots of emotional information. And opinion targets identification plays an import role in huge potential commercial value mining, especially in sales decision making and development trend forecasting. Traditional CRFs-based method has achieved a pretty good result to a certain extent. However, its discovery ability of out-of-vocabulary words and optimization of the mining model are both insufficient. We propose a novel cyclic cascaded CRFs model for opinion targets identification which incorporates rule-based and statistic-based methods. The approach acquires candidate opinion targets through part-of-speech, syntactic and semantic rules, and integrates them in a cyclic cascaded CRFs model for the accurate opinion targets identification. Experimental results on COAE2014 dataset show the outperformance of this method.
机译:电子商务平台,微博和论坛上的意见句包含许多情感信息。意见目标的确定在巨大的潜在商业价值挖掘中,尤其是在销售决策和发展趋势预测中,起着重要的作用。传统的基于CRF的方法在一定程度上取得了很好的效果。但是,其词汇外单词的发现能力和挖掘模型的优化均不足。我们提出了一种新颖的循环级联CRFs模型,用于意见目标识别,该模型结合了基于规则和基于统计的方法。该方法通过词性,句法和语义规则获取候选意见目标,并将其集成到循环级联的CRF模型中,以进行准确的意见目标识别。在COAE2014数据集上的实验结果表明了该方法的优越性。

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