Ontology Concept Extraction Algorithm for Deep Neural Networks

A. Ponomarev, A. Agafonov
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引用次数: 2

Abstract

An important drawback of deep neural networks limiting their application in critical tasks is the lack of explainability. Recently, several methods have been proposed to explain and interpret the results obtained by deep neural networks, however, the majority of these methods are targeted mostly at AI experts. Ontology-based explanation techniques seem promising, as they can be used to form explanations using domain terms (corresponding to ontology concepts) and logical statements, which is more understandable by domain experts. Recently, it has been shown, that inner representations (layer activations) of deep neural network can often be aligned with ontology concepts. However, not every concept can be matched with the output of every layer, and it can be computationally hard to identify the particular layer that can be easily aligned with the given concept, which is aggravated by the number of concepts in a typical ontology. The paper proposes an algorithm to address this problem. For each ontology concept it helps to identify neural network layer, which produces output that can be best aligned with the given concept. These connections can then be used to identify all the ontology concepts relevant to the sample and explain the network output in a user-friendly way.
深度神经网络本体概念提取算法
深度神经网络的一个重要缺点是缺乏可解释性,限制了其在关键任务中的应用。最近,人们提出了几种方法来解释和解释深度神经网络获得的结果,然而,这些方法中的大多数主要针对人工智能专家。基于本体的解释技术看起来很有前途,因为它们可以使用领域术语(对应于本体概念)和逻辑语句来形成解释,这更容易被领域专家理解。最近的研究表明,深度神经网络的内部表征(层激活)通常可以与本体概念对齐。然而,并不是每个概念都能与每一层的输出相匹配,并且在计算上很难识别出可以很容易地与给定概念对齐的特定层,而典型本体中概念的数量又加剧了这一点。本文提出了一种算法来解决这个问题。对于每个本体概念,它有助于识别神经网络层,从而产生与给定概念最一致的输出。然后可以使用这些连接来识别与示例相关的所有本体概念,并以用户友好的方式解释网络输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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