Lost in Transduction: Transductive Transfer Learning in Text Classification

A. Moreo, Andrea Esuli, F. Sebastiani
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引用次数: 9

Abstract

Obtaining high-quality labelled data for training a classifier in a new application domain is often costly. Transfer Learning (a.k.a. “Inductive Transfer”) tries to alleviate these costs by transferring, to the “target” domain of interest, knowledge available from a different “source” domain. In transfer learning the lack of labelled information from the target domain is compensated by the availability at training time of a set of unlabelled examples from the target distribution. Transductive Transfer Learning denotes the transfer learning setting in which the only set of target documents that we are interested in classifying is known and available at training time. Although this definition is indeed in line with Vapnik’s original definition of “transduction”, current terminology in the field is confused. In this article, we discuss how the term “transduction” has been misused in the transfer learning literature, and propose a clarification consistent with the original characterization of this term given by Vapnik. We go on to observe that the above terminology misuse has brought about misleading experimental comparisons, with inductive transfer learning methods that have been incorrectly compared with transductive transfer learning methods. We then, give empirical evidence that the difference in performance between the inductive version and the transductive version of a transfer learning method can indeed be statistically significant (i.e., that knowing at training time the only data one needs to classify indeed gives an advantage). Our clarification allows a reassessment of the field, and of the relative merits of the major, state-of-the-art algorithms for transfer learning in text classification.
迷失在转导中:文本分类中的转导迁移学习
获得高质量的标记数据来训练一个新的应用领域的分类器通常是昂贵的。迁移学习(又称“归纳迁移”)试图通过将来自不同“源”领域的知识转移到感兴趣的“目标”领域来减轻这些成本。在迁移学习中,来自目标域的标记信息的缺乏由训练时来自目标分布的一组未标记示例的可用性来补偿。转导迁移学习指的是一种迁移学习设置,在这种设置中,我们感兴趣分类的唯一目标文档集是已知的,并且在训练时是可用的。虽然这个定义确实符合Vapnik最初对“转导”的定义,但目前该领域的术语是混乱的。在本文中,我们讨论了术语“转导”在迁移学习文献中是如何被误用的,并提出了与Vapnik对该术语的原始描述一致的澄清。我们继续观察到,上述术语的误用带来了误导性的实验比较,归纳迁移学习方法被错误地与传导迁移学习方法进行了比较。然后,我们给出经验证据,证明迁移学习方法的归纳版本和转换版本之间的性能差异确实可以在统计上显着(即,在训练时知道唯一需要分类的数据确实具有优势)。我们的澄清允许对该领域进行重新评估,以及对文本分类中迁移学习的主要、最先进算法的相对优点进行重新评估。
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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