论文标题
功能和实例联合选择:增强学习观点
Feature and Instance Joint Selection: A Reinforcement Learning Perspective
论文作者
论文摘要
特征选择和实例选择是数据处理的两种重要技术。但是,此类选择大多是单独研究的,而对关节选择的现有工作则精致。因此忽略了特征空间和实例空间之间的潜在细粒度相互作用。为了应对这一挑战,我们提出了一种加强学习解决方案,以完成联合选择任务,并同时捕获每个功能和每个实例的选择之间的相互作用。特别是,连续扫描机制被设计为代理的行动策略,并使用改变协作的环境来增强代理协作。此外,交互式范式还引入了先前的选择知识,以帮助代理进行更有效的探索。最后,对现实世界数据集的广泛实验表明了性能的改善。
Feature selection and instance selection are two important techniques of data processing. However, such selections have mostly been studied separately, while existing work towards the joint selection conducts feature/instance selection coarsely; thus neglecting the latent fine-grained interaction between feature space and instance space. To address this challenge, we propose a reinforcement learning solution to accomplish the joint selection task and simultaneously capture the interaction between the selection of each feature and each instance. In particular, a sequential-scanning mechanism is designed as action strategy of agents, and a collaborative-changing environment is used to enhance agent collaboration. In addition, an interactive paradigm introduces prior selection knowledge to help agents for more efficient exploration. Finally, extensive experiments on real-world datasets have demonstrated improved performances.