LGDec 6, 2017

Distribution-Based Categorization of Classifier Transfer Learning

arXiv:1712.02159v1
Originality Synthesis-oriented
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This work clarifies terminology for researchers in machine learning, but it is incremental as it organizes existing concepts rather than introducing new methods.

The paper addresses the confusion in transfer learning terminology by reviewing classification methods and proposing a distribution-based categorization with a common nomenclature.

Transfer Learning (TL) aims to transfer knowledge acquired in one problem, the source problem, onto another problem, the target problem, dispensing with the bottom-up construction of the target model. Due to its relevance, TL has gained significant interest in the Machine Learning community since it paves the way to devise intelligent learning models that can easily be tailored to many different applications. As it is natural in a fast evolving area, a wide variety of TL methods, settings and nomenclature have been proposed so far. However, a wide range of works have been reporting different names for the same concepts. This concept and terminology mixture contribute however to obscure the TL field, hindering its proper consideration. In this paper we present a review of the literature on the majority of classification TL methods, and also a distribution-based categorization of TL with a common nomenclature suitable to classification problems. Under this perspective three main TL categories are presented, discussed and illustrated with examples.

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