MP-Boost:通过自适应特征和观察采样的小补丁增强。

Mohammad Taha Toghani, Genevera I Allen
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引用次数: 0

摘要

增强方法是最好的通用和现成的机器学习方法之一,获得了广泛的普及。在本文中,我们寻求开发一种增强方法,该方法可以产生与流行的AdaBoost和梯度增强方法相当的精度,但计算速度更快,其解决方案更具可解释性。我们通过开发MP- boost来实现这一目标,这是一种基于AdaBoost的算法,它通过在每次迭代中自适应地选择实例和特征的小子集,或者我们称之为小补丁(MP)来学习。通过对数据的小子集进行顺序学习,我们的方法在计算上比其他经典的增强算法要快。此外,随着它的发展,MP-Boost自适应地学习特征和实例的概率分布,这些特征和实例增加了最重要的特征和具有挑战性的实例的权重,因此自适应地选择最相关的小补丁进行学习。这些学习到的概率分布也有助于解释我们的方法。我们通过经验证明了我们的方法在各种二元分类任务上的可解释性、相对准确性和计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MP-Boost: Minipatch Boosting via Adaptive Feature and Observation Sampling.

Boosting methods are among the best general-purpose and off-the-shelf machine learning approaches, gaining widespread popularity. In this paper, we seek to develop a boosting method that yields comparable accuracy to popular AdaBoost and gradient boosting methods, yet is faster computationally and whose solution is more interpretable. We achieve this by developing MP-Boost, an algorithm loosely based on AdaBoost that learns by adaptively selecting small subsets of instances and features, or what we term minipatches (MP), at each iteration. By sequentially learning on tiny subsets of the data, our approach is computationally faster than other classic boosting algorithms. Also as it progresses, MP-Boost adaptively learns a probability distribution on the features and instances that upweight the most important features and challenging instances, hence adaptively selecting the most relevant minipatches for learning. These learned probability distributions also aid in interpretation of our method. We empirically demonstrate the interpretability, comparative accuracy, and computational time of our approach on a variety of binary classification tasks.

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