基于异构特征空间的无监督迁移学习任务选择机

Shan Xue, Jie Lu, Guangquan Zhang, Li Xiong
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引用次数: 2

摘要

迁移学习技术试图用比传统机器学习技术更少的训练数据或更少的训练将知识从以前的任务转移到新的目标任务。由于迁移学习更关心任务及其域之间的相关性,因此它适用于处理未标记的大量数据,分别克服分布和特征空间差距。本文在无监督迁移学习领域提出了一种新的任务选择算法——任务选择机(task selection Machine, TSM)。它涉及到一个关键的技术问题,即异构特征空间的特征映射。将扩展特征方法应用到特征映射算法中。此外,本文的主要贡献TSM训练算法依赖于特征映射。同时,本文提出的TSM最终满足了无监督迁移学习的要求,反过来解决了无监督多任务迁移学习问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous Feature Space Based Task Selection Machine for Unsupervised Transfer Learning
Transfer learning techniques try to transfer knowledge from previous tasks to a new target task with either fewer training data or less training than traditional machine learning techniques. Since transfer learning cares more about relatedness between tasks and their domains, it is useful for handling massive data, which are not labeled, to overcome distribution and feature space gaps, respectively. In this paper, we propose a new task selection algorithm in an unsupervised transfer learning domain, called as Task Selection Machine (TSM). It goes with a key technical problem, i.e., feature mapping for heterogeneous feature spaces. An extended feature method is applied to feature mapping algorithm. Also, TSM training algorithm, which is main contribution for this paper, relies on feature mapping. Meanwhile, the proposed TSM finally meets the unsupervised transfer learning requirements and solves the unsupervised multi-task transfer learning issues conversely.
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