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Simplifying Reinforced Feature Selection via Restructured Choice Strategy of Single Agent

机译:通过重组选择策略简化强化特征选择

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Feature selection aims to select a subset of features to optimize the performances of downstream predictive tasks. Recently, multi-agent reinforced feature selection (MARFS) has been introduced to automate feature selection, by creating agents for each feature to select or deselect corresponding features. Although MARFS enjoys the automation of the selection process, MARFS suffers from not just the data complexity in terms of contents and dimensionality, but also the exponentially-increasing computational costs with regard to the number of agents. The raised concern leads to a new research question: Can we simplify the selection process of agents under reinforcement learning context so as to improve the efficiency and costs of feature selection? To address the question, we develop a single-agent reinforced feature selection approach integrated with restructured choice strategy. Specifically, the restructured choice strategy includes: 1) we exploit only one single agent to handle the selection task of multiple features, instead of using multiple agents. 2) we develop a scanning method to empower the single agent to make multiple selection/deselection decisions in each round of scanning. 3) we exploit the relevance to predictive labels of features to prioritize the scanning orders of the agent for multiple features. 4) we propose a convolutional auto-encoder algorithm, integrated with the encoded index information of features, to improve state representation. 5) we design a reward scheme that take into account both prediction accuracy and feature redundancy to facilitate the exploration process. Finally, we present extensive experimental results to demonstrate the efficiency and effectiveness of the proposed method.
机译:特征选择旨在选择功能的子集,以优化下游预测任务的性能。最近,已经引入了多代理强化特征选择(Marfs)来自动化特征选择,通过为每个功能创建代理来选择或取消选择相应的功能。虽然Marfs享有选择过程的自动化,但Marfs不仅仅是在内容和维度方面的数据复杂性,而且呈指数上增加了代理人数的计算成本。提出的关注导致新的研究问题:我们可以简化强化学习背景下代理的选择过程,以提高功能选择的效率和成本吗?要解决问题,我们开发了一个与重组选择策略集成的单代理强化功能选择方法。具体而言,重组选择策略包括:1)我们只利用一个代理来处理多个功能的选择任务,而不是使用多个代理。 2)我们开发一种扫描方法,以使单个代理能够在每轮扫描中进行多种选择/取消选择决策。 3)我们利用了与预测功能的相关性,以优先考虑代理的扫描订单以进行多个功能。 4)我们提出了一种卷积自动编码器算法,与特征的编码索引信息集成,以提高状态表示。 5)我们设计了一种奖励方案,以考虑预测准确性和功能冗余,以方便探索过程。最后,我们呈现了广泛的实验结果,以证明所提出的方法的效率和有效性。

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