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MUSE: Modularizing Unsupervised Sense Embeddings

机译:MUSE:模块化无监督的意义嵌入

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This paper proposes to address the word sense ambiguity issue in an unsupervised manner, where word sense representations are learned along a word sense selection mechanism given contexts. Prior work focused on designing a single model to deliver both mechanisms, and thus suffered from either coarse-grained representation learning or inefficient sense selection. The proposed modular approach, MUSE, implements flexible modules to optimize distinct mechanisms, achieving the first purely sense-level representation learning system with linear-time sense selection. We leverage reinforcement learning to enable joint training on the proposed modules, and introduce various exploration techniques on sense selection for better robustness. The experiments on benchmark data show that the proposed approach achieves the state-of-the-art performance on synonym selection as well as on contextual word similarities in terms of MaxSimC.
机译:本文提出以一种无监督的方式解决词义歧义问题,即通过给定上下文的词义选择机制学习词义表示。先前的工作着重于设计提供两种机制的单一模型,因此遭受了粗粒度表示学习或效率低下的感觉选择的困扰。提议的模块化方法MUSE实现了灵活的模块,以优化不同的机制,从而实现了第一个具有线性时间感测选择的纯感测级表示学习系统。我们利用强化学习来对拟议的模块进行联合训练,并在感觉选择上引入各种探索技术以提高鲁棒性。在基准数据上进行的实验表明,所提出的方法在同义词选择以及上下文单词相似性方面都达到了有关MaxSimC的最新性能。

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