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Reinforcement Learning Based Decision Tree Induction Over Data Streams with Concept Drifts

机译:具有概念漂移的基于增强学习的数据流决策树归纳

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Traditional decision tree induction algorithms are greedy with locally-optimal decisions made at each node based on splitting criteria like information gain or Gini index. A reinforcement learning approach to decision tree building seems more suitable as it aims at maximizing the long-term return rather than optimizing a short-term goal. In this paper, a reinforcement learning approach is used to train a Markov Decision Process (MDP), which enables the creation of a short and highly accurate decision tree. Moreover, the use of reinforcement learning naturally enables additional functionality such as learning under concept drifts, feature importance weighting, inclusion of new features and forgetting of obsolete ones as well as classification with incomplete data. To deal with concept drifts, a reset operation is proposed that allows for local re-learning of outdated parts of the tree. Preliminary experiments show that such an approach allows for better adaptation to concept drifts and changing feature spaces, while still producing a short and highly accurate decision tree.
机译:传统的决策树归纳算法非常贪婪,每个节点都基于诸如信息增益或Gini索引之类的划分标准在每个节点上做出局部最优决策。决策树构建的强化学习方法似乎更适合,因为它旨在最大化长期回报而不是优化短期目标。在本文中,强化学习方法用于训练马尔可夫决策过程(MDP),从而可以创建简短而高度准确的决策树。此外,强化学习的使用自然可以实现其他功能,例如在概念漂移下进行学习,功能重要性加权,包含新功能以及遗忘过时的功能以及使用不完整的数据进行分类。为了处理概念漂移,提出了一种重置操作,该操作允许本地重新学习树的过时部分。初步实验表明,这种方法可以更好地适应概念漂移和更改特征空间,同时仍能生成简短且高度准确的决策树。

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