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Learning Sentence Representations over Tree Structures for Target-dependent Classification

机译:针对目标依赖分类的树结构学习句子表示

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Target-dependent classification tasks, such as aspect-level sentiment analysis, perform finegrained classifications towards specific targets. Semantic compositions over tree structures are promising for such tasks, as they can potentially capture long-distance interactions between targets and their contexts. However, previous work that operates on tree structures resorts to syntactic parsers or Treebank annotations, which are either subject to noise in informal texts or highly expensive to obtain. To address above issues, we propose a reinforcement learning based approach, which automatically induces target-specific sentence representations over tree structures. The underlying model is a RNN encoder-decoder that explores possible binary tree structures and a reward mechanism that encourages structures that improve performances on downstream tasks. We evaluate our approach on two benchmark tasks: firm-specific cumulative abnormal return prediction (based on formal news texts) and aspect-level sentiment analysis (based on informal social media texts). Experimental results show that our model gives superior performances compared to previous work that operates on parsed trees. Moreover, our approach gives some intuitions on how target-specific sentence representations can be achieved from its word constituents.
机译:与目标相关的分类任务(如方面级别的情感分析)对特定目标执行细粒度的分类。树状结构上的语义组合对于此类任务很有希望,因为它们可以潜在地捕获目标与其上下文之间的远程交互。但是,以前在树结构上进行的工作依赖于语法解析器或Treebank注释,这些语法或注释容易受到非正式文本的干扰或获取成本很高。为了解决上述问题,我们提出了一种基于强化学习的方法,该方法会自动在树形结构上诱导出目标特定的句子表示形式。基本模型是RNN编码器/解码器,它探索可能的二叉树结构,以及奖励机制,该奖励机制鼓励改善下游任务性能的结构。我们在两个基准任务上评估我们的方法:公司特定的累积异常收益预测(基于正式新闻文本)和方面水平的情绪分析(基于非正式社交媒体文本)。实验结果表明,与以前在解析树上进行的工作相比,我们的模型具有出色的性能。此外,我们的方法给出了一些直觉,说明如何从其单词构成中实现针对特定目标的句子表示。

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