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Exploring the use of deep learning for feature location

机译:探索深度学习的使用位置

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Deep learning models can infer complex patterns present in natural language text. Relative to n-gram models, deep learning models can capture more complex statistical patterns based on smaller training corpora. In this paper we explore the use of a particular deep learning model, document vectors (DVs), for feature location. DVs seem well suited to use with source code, because they both capture the influence of context on each term in a corpus and map terms into a continuous semantic space that encodes semantic relationships such as synonymy. We present preliminary results that show that a feature location technique (FLT) based on DVs can outperform an analogous FLT based on latent Dirichlet allocation (LDA) and then suggest several directions for future work on the use of deep learning models to improve developer effectiveness in feature location.
机译:深度学习模型可以推断出自然语言文本中的复杂模式。相对于N-GRAM模型,深度学习模型可以基于较小的训练基层捕获更复杂的统计模式。在本文中,我们探讨了特定的深度学习模型,文档向量(DVS),用于特征位置。 DVS似乎非常适合与源代码一起使用,因为它们都在语料库中捕获上下文的影响,并将术语映射到编码同义词等语义关系的连续语义空间中。我们提出了初步结果,表明基于DVS的特征定位技术(FLT)可以基于潜在的Dirichlet分配(LDA)来胜过类似的FLT,然后建议使用深度学习模型的未来工作的几个方向,以提高开发人员的效果特色位置。

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