Learning Better Representations Using Auxiliary Knowledge

Saed Rezayi
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Abstract

Representation Learning is the core of Machine Learning and Artificial Intelligence as it summarizes input data points into low dimensional vectors. This low dimensional vectors should be accurate portrayals of the input data, thus it is crucial to find the most effective and robust representation possible for given input as the performance of the ML task is dependent on the resulting representations. In this summary, we discuss an approach to augment representation learning which relies on external knowledge. We briefly describe the shortcoming of the existing techniques and describe how an auxiliary knowledge source could result in obtaining improved representations.
使用辅助知识学习更好的表征
表征学习是机器学习和人工智能的核心,因为它将输入数据点总结为低维向量。这种低维向量应该是输入数据的准确描述,因此找到给定输入的最有效和最健壮的表示是至关重要的,因为ML任务的性能依赖于结果表示。在本总结中,我们讨论了一种依赖于外部知识的增强表征学习方法。我们简要地描述了现有技术的缺点,并描述了辅助知识来源如何能够获得改进的表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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