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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >HOW FAR DO WE GET USING MACHINE LEARNING BLACK-BOXES?
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HOW FAR DO WE GET USING MACHINE LEARNING BLACK-BOXES?

机译:我们如何使用机器学习黑匣子?

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摘要

With several good research groups actively working in machine learning (ML) approaches, we have now the concept of self-containing machine learning solutions that oftentimes work out-of-the-box leading to the concept of ML black-boxes. Although it is important to have such black-boxes helping researchers to deal with several problems nowadays, it comes with an inherent problem increasingly more evident: we have observed that researchers and students are progressively relying on ML black-boxes and, usually, achieving results without knowing the machinery of the classifiers. In this regard, this paper discusses the use of machine learning black-boxes and poses the question of how far we can get using these out-of-the-box solutions instead of going deeper into the machinery of the classifiers. The paper focuses on three aspects of classifiers: (1) the way they compare examples in the feature space; (2) the impact of using features with variable dimensionality; and (3) the impact of using binary classifiers to solve a multi-class problem. We show how knowledge about the classifier's machinery can improve the results way beyond out-of-the-box machine learning solutions.
机译:随着几个优秀的研究小组积极致力于机器学习(ML)方法,我们现在有了自包含式机器学习解决方案的概念,该解决方案通常开箱即用,从而导致ML黑盒的概念。尽管如今有这样的黑匣子帮助研究人员应对若干问题很重要,但它伴随着一个内在问题,这一问题越来越明显:我们观察到研究人员和学生正在逐渐依赖ML黑匣子,并且通常会取得成果不了解分类器的机制。在这方面,本文讨论了机器学习黑匣子的使用,并提出了一个问题,即使用这些开箱即用的解决方案,而不是深入研究分类器的机制,我们可以走多远。本文主要关注分类器的三个方面:(1)它们在特征空间中比较示例的方式; (2)使用尺寸可变的特征的影响; (3)使用二元分类器解决多分类问题的影响。我们将展示关于分类器机器的知识如何超越现成的机器学习解决方案来改善结果。

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