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Context Weight Considered For Implicit Feature Extracting

机译:考虑隐式功能提取的上下文重量

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Researchers have been devoted to using context to extract implicit features. However, little concerns have been given to the situation that not all the contexts are meaningful. To solve this problem, we present a new method to evaluate the contribution of the contexts for extracting. We build an improved Co-occurrence matrix that containing the distance between an opinion word and different contexts. And then a LDA topic model is used to get the topic probability of the opinion word. The weight of context can be obtained by using cosine similarity in the improved Co-occurrence matrix and LDA topic model. We design a formula to extract implicit features with the consideration of context and topic. Experiments have showed that our method provides higher accuracy in extracting the implicit features.
机译:研究人员已经致力于使用上下文来提取隐式功能。但是,没有担心并非所有上下文都有意义的情况。为了解决这个问题,我们提出了一种评估提取上下文的贡献的新方法。我们构建一个改进的共生矩阵,其中包含意见单词和不同上下文之间的距离。然后,LDA主题模型用于获取意见单的主题概率。通过在改进的共出矩阵和LDA主题模型中使用余弦相似性,可以获得上下文的权重。我们设计一个公式,以考虑上下文和主题来提取隐式功能。实验表明,我们的方法在提取隐式功能方面提供更高的准确性。

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