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Relevance learning for mental disease classification

机译:精神疾病分类的相关学习

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摘要

In medical classification tasks, it is important to gain information about how decisions are made to ground and reflect therapies based on this knowledge. Neural black box mechanisms are not suitable for such tasks, whereas symbolic methods which extract explicit rules are, though their tolerance with respect to noise is often smaller since they do not rely on distributed representations. In this article, we test three hybrid prototype-based neural models which combine neural representations with explicit information representation in comparison to classical decision trees for mental disease classification. Depending on the model, information about relevant input attributes and explicit rules can be derived.
机译:在医学分类任务中,重要的是要获得有关如何根据这些知识做出地面决策和反映疗法的信息。神经黑匣子机制不适合此类任务,而提取显式规则的符号方法则适用,尽管它们对噪声的容忍度通常较小,因为它们不依赖于分布式表示。在本文中,我们测试了三种基于混合原型的神经模型,这些模型将神经表示与显式信息表示相结合,与用于精神疾病分类的经典决策树相比。根据模型,可以导出有关相关输入属性和显式规则的信息。

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