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Using relation selection to improve value propagation in a ConceptNet-based sentiment dictionary

机译:在基于ConceptNet的情感词典中使用关系选择来改善价值传播

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摘要

Sentiment analysis has become an important topic in natural language processing in recent years, and sentiment dictionaries are essential for research in this field. Concept-level sentiment dictionaries have broader coverage than word-based dictionaries, but they are still insufficient for real-world applications. In our previous work, we used a commonsense knowledge base (ConceptNet) as the foundation to build a larger dictionary. By propagating sentiment values from concepts with known values to empty concepts, we greatly enlarged our concept-level sentiment dictionary. In this work, we refine our previous method by adding relation selection and bias correction steps. Based on the assumption that concepts pass their sentiment values to their neighbors in different ways depending on the relations connecting them, we use sequential forward search to find the best combination of relations. We also propose a bias correction method that guarantees that the average deviation and standard deviation of sentiment values in the whole sentiment dictionary remain unchanged. We show that the strategy can improve the polarity accuracy by 3.7% and the Kendall t distance by 17.3% relative to our previous method. Also, our experiment shows that the dictionary we constructed leads to better performance in the sentiment polarity classification task.
机译:近年来,情感分析已成为自然语言处理中的重要话题,情感词典对这一领域的研究至关重要。概念级别的情感词典比基于单词的词典具有更广泛的覆盖范围,但是对于实际应用而言仍然不够。在之前的工作中,我们使用常识知识库(ConceptNet)作为基础来构建更大的词典。通过将情感值从具有已知值的概念传播到空概念,我们极大地扩展了概念级别的情感词典。在这项工作中,我们通过添加关系选择和偏差校正步骤来完善以前的方法。基于这样的假设,即概念根据连接它们的关系以不同的方式将它们的情感值传递给它们的邻居,因此我们使用顺序正向搜索来找到关系的最佳组合。我们还提出了一种偏差校正方法,该方法可以确保整个情感词典中情感值的平均偏差和标准偏差保持不变。我们表明,相对于我们以前的方法,该策略可以将极性精度提高3.7%,将Kendall t距离提高17.3%。同样,我们的实验表明,我们构建的词典在情感极性分类任务中具有更好的性能。

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