ALMMo-0分类器的一种新方法:准确度与复杂度之间的权衡

Filipe Santos, J. Sousa, S. Vieira
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引用次数: 1

摘要

提出了一种使用0阶自主学习多模型(ALMMo-0)分类器的新方法。ALMMo-0分类器是全自动的,不依赖于任何超参数。云的创建依赖于按其规范规范化数据点,这可能会从数据本身中删除一个重要的自由度。提出的方法包括添加云的初始半径作为超参数,这使得可以跳过归一化步骤。这种方法需要寻找超参数的理想值。这样,在训练一组具有不同初始半径值的模型后,用户有望从几个模型中进行选择,这些模型的范围从更精确到更简单。该方法在三个基准问题上进行了测试,并与使用原始方法获得的结果进行了比较。此外,该方法还在真实数据集(急性肾损伤)上进行了测试。所获得的结果增强了所提出方法的通用性,使用户能够在精度、训练时间和复杂性方面选择更符合设计要求的模型。
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A new approach to ALMMo-0 Classifiers: A trade-off between accuracy and complexity
In this paper, a new approach to the usage of 0-order Autonomous Learning Multi-Model (ALMMo-0) classifiers is proposed. ALMMo-0 classifiers are fully automatic and do not rely on any hyper-parameters. The creation of clouds relies on normalizing data points by their norm, which may remove an important degree of freedom from the data itself. The proposed approach consists of adding the initial radius of the clouds as an hyper-parameter, which makes it possible to skip the normalization step. This approach requires the search for the ideal value of the hyper-parameter. This way, upon training a set of models with different values for the initial radius, the user is expected to be able to choose from several models which range from more accurate to less complex. This approach was tested on three benchmark problems and compared to the results obtained using the original approach. Furthermore, this approach was also tested on a real dataset (Acute Kidney Injury). The obtained results enhance the versatility provided by the proposed method, successfully allowing the user to choose the model that fits better the design demands regarding accuracy, training time, and complexity.
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