态度识别的深度记忆网络

Cheng Li, Xiaoxiao Guo, Q. Mei
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引用次数: 90

摘要

我们考虑从文本中识别对给定实体集的态度的任务。按照惯例,该任务被分解为两个独立的子任务:目标检测,识别文本中是否明确或隐含地提到了每个实体;极性分类,将对已识别实体(目标)的确切情感分类为积极、消极或中立。相反,我们表明态度识别可以通过端到端机器学习架构来解决,其中两个子任务由深度记忆网络交错。这样,在目标检测过程中产生的信号为极性分类提供线索,反过来,预测的极性为目标识别提供反馈。此外,对一组目标的处理也会相互影响——学习到的表征可能对某些目标具有相同的语义,但对其他目标则不同。提出的深度记忆网络AttNet优于不考虑子任务之间或目标之间相互作用的方法,包括传统的机器学习方法和最先进的深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Memory Networks for Attitude Identification
We consider the task of identifying attitudes towards a given set of entities from text. Conventionally, this task is decomposed into two separate subtasks: target detection that identifies whether each entity is mentioned in the text, either explicitly or implicitly, and polarity classification that classifies the exact sentiment towards an identified entity (the target) into positive, negative, or neutral. Instead, we show that attitude identification can be solved with an end-to-end machine learning architecture, in which the two subtasks are interleaved by a deep memory network. In this way, signals produced in target detection provide clues for polarity classification, and reversely, the predicted polarity provides feedback to the identification of targets. Moreover, the treatments for the set of targets also influence each other -- the learned representations may share the same semantics for some targets but vary for others. The proposed deep memory network, the AttNet, outperforms methods that do not consider the interactions between the subtasks or those among the targets, including conventional machine learning methods and the state-of-the-art deep learning models.
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