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On-Line Classification of Data Streams with Missing Values Based on Reinforcement Learning

机译:基于强化学习的缺失值数据流在线分类

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摘要

In some applications, data arrive sequentially and they are not available in batch form, what makes difficult the use of traditional classification systems. In addition, some attributes may lack due to some real-world conditions. For this problem, a number of decisions have to be made regarding how to proceed with the incomplete and unlabeled incoming objects, how to guess its missing attributes values, how to classify it, whether to include it in the training set, or when to ask for the class label to an expert. Unfortunately, no decision works well for all data sets. This data dependency motivates our formulation of the problem in terms of elements of reinforcement learning. The application of this learning paradigm for this problem is, to the best of our knowledge, novel. The empirical results are encouraging since the proposed framework behaves better and more generally than many strategies used isolatedly, and makes an efficient use of human effort (requests for the class label to an expert) and computer memory (the increase of size of the training set).
机译:在某些应用程序中,数据是按顺序到达的,而不能以批处理形式使用,这使传统分类系统的使用变得困难。另外,由于某些实际条件,某些属性可能会缺少。对于此问题,必须做出许多决定,包括如何处理未完成且未标记的传入对象,如何猜测其缺失的属性值,如何对其进行分类,是否将其包括在训练集中或何时询问。给专家的班级标签。不幸的是,对于所有数据集,没有一项决定能奏效。这种数据依赖性促使我们根据强化学习的要素来提出问题。就我们所知,这种学习范式在这个问题上的应用是新颖的。实验结果令人鼓舞,因为拟议的框架表现得比单独使用的许多策略更好,更普遍,并且有效地利用了人工(要求专家给班级标签)和计算机内存(增加了训练集的大小) )。

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