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Referential uncertainty and word learning in high-dimensional, continuous meaning spaces

机译:高维,连续含义空间中的参考不确定性和词语学习

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This paper discusses lexicon word learning in high-dimensional meaning spaces from the viewpoint of referential uncertainty. We investigate various state-of-the-art Machine Learning algorithms and discuss the impact of scaling, representation and meaning space structure. We demonstrate that current Machine Learning techniques successfully deal with high-dimensional meaning spaces. In particular, we show that exponentially increasing dimensions linearly impact learner performance and that referential uncertainty from word sensitivity has no impact.
机译:本文从参照不确定性的观点讨论了Lexicon Word在高维含义空间中学习。我们调查各种最先进的机器学习算法,讨论缩放,表示和含义空间结构的影响。我们展示了当前的机器学习技术成功地处理了高维含义空间。特别是,我们表明指数增加的尺寸线性影响学习者的性能,并且来自字感性的参照不确定性没有影响。

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