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Transformation of discriminative single-task classification into generative multi-task classification in machine learning context

机译:机器学习环境中判别性单任务分类向生成多任务分类的转换

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摘要

Classification is one of the most popular tasks of machine learning, which has been involved in broad applications in practice, such as decision making, sentiment analysis and pattern recognition. It involves the assignment of a class/label to an instance and is based on the assumption that each instance can only belong to one class. This assumption does not hold, especially for indexing problems (when an item, such as a movie, can belong to more than one category) or for complex items that reflect more than one aspect, e.g. a product review outlining advantages and disadvantages may be at the same time positive and negative. To address this problem, multi-label classification has been increasingly used in recent years, by transforming the data to allow an instance to have more than one label; the nature of learning, however, is the same as traditional learning, i.e. learning to discriminate one class from other classes and the output of a classifier is still single (although the output may contain a set of labels). In this paper we propose a fundamentally different type of classification in which the membership of an instance to all classes(/labels) is judged by a multiple-input-multiple- output classifier through generative multi-task learning. An experimental study is conducted on five UCI data sets to show empirically that an instance can belong to more than one class, by using the theory of fuzzy logic and checking the extent to which an instance belongs to each single class, i.e. the fuzzy membership degree. The paper positions new research directions on multi-task classification in the context of both supervised learning and semi-supervised learning.
机译:分类是机器学习中最流行的任务之一,在实践中已经涉及到广泛的应用,例如决策,情感分析和模式识别。它涉及为一个实例分配一个类/标签,并且基于每个实例只能属于一个类的假设。这种假设不成立,特别是对于索引问题(当一个项目,例如电影,可以属于一个以上的类别)或反映多个方面的复杂项目时,例如。对产品进行概述的优缺点可能同时是积极的和消极的。为了解决这个问题,近年来,通过转换数据以允许一个实例具有多个标签,多标签分类已得到越来越多的使用。但是,学习的性质与传统学习相同,即学习将一个班级与其他班级区分开,并且分类器的输出仍然是单一的(尽管输出可能包含一组标签)。在本文中,我们提出了一种根本不同的分类类型,其中实例的所有类(/标签)的成员资格是通过生成多任务学习的多输入多输出分类器来判断的。通过使用模糊逻辑理论并检查实例属于每个单个类的程度,即对五个UCI数据集进行了实验研究,以通过实例证明一个实例可以属于多个类。本文在监督学习和半监督学习的背景下为多任务分类提供了新的研究方向。

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