Disjunctive Threshold Networks for Tabular Data Classification

Weijia Wang;Litao Qiao;Bill Lin
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引用次数: 1

Abstract

While neural networks have been achieving increasingly significant excitement in solving classification tasks such as natural language processing, their lack of interpretability becomes a great challenge for neural networks to be deployed in certain high-stakes human-centered applications. To address this issue, we propose a new approach for generating interpretable predictions by inferring a simple three-layer neural network with threshold activations, so that it can benefit from effective neural network training algorithms and at the same time, produce human-understandable explanations for the results. In particular, the hidden layer neurons in the proposed model are trained with floating point weights and binary output activations. The output neuron is also trainable as a threshold logic function that implements a disjunctive operation, forming the logical-OR of the first-level threshold logic functions. This neural network can be trained using state-of-the-art training methods to achieve high prediction accuracy. An important feature of the proposed architecture is that only a simple greedy algorithm is required to provide an explanation with the prediction that is human-understandable. In comparison with other explainable decision models, our proposed approach achieves more accurate predictions on a broad set of tabular data classification datasets.
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用于表格数据分类的虚拟阈值网络
尽管神经网络在解决自然语言处理等分类任务方面取得了越来越显著的进展,但它们缺乏可解释性成为神经网络在某些高风险的以人为中心的应用中部署的巨大挑战。为了解决这个问题,我们提出了一种新的方法,通过推断一个具有阈值激活的简单三层神经网络来生成可解释的预测,这样它就可以受益于有效的神经网络训练算法,同时对结果产生人类可理解的解释。特别地,所提出的模型中的隐藏层神经元是用浮点权重和二进制输出激活来训练的。输出神经元也可以作为阈值逻辑函数来训练,该阈值逻辑函数实现析取运算,形成第一级阈值逻辑函数的逻辑OR。该神经网络可以使用最先进的训练方法进行训练,以实现高预测精度。所提出的体系结构的一个重要特征是,只需要一个简单的贪婪算法就可以提供人类可以理解的预测解释。与其他可解释的决策模型相比,我们提出的方法在一组广泛的表格数据分类数据集上实现了更准确的预测。
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CiteScore
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