论文标题
OAK4XAI:朝外的模型可解释的数字农业人工智能
OAK4XAI: Model towards Out-Of-Box eXplainable Artificial Intelligence for Digital Agriculture
论文作者
论文摘要
最近的机器学习方法在人工智能(AI)应用中有效。它们以高度的准确性产生强大的结果。但是,这些技术中的大多数并不能为支持其结果和决策提供人为理解的解释。它们通常充当黑匣子,并且不容易理解如何做出决策。最近引起了很多兴趣的可解释人工智能(XAI)试图为决策和培训的AI模型提供人为理解的解释。例如,在数字农业中,相关领域通常会呈现与背景知识无联系的特殊或输入功能。数据挖掘过程在农业数据上的应用导致结果(知识),这很难解释。在本文中,我们提出了一个知识图模型和一个本体设计作为XAI框架(OAK4XAI)来解决此问题的文章。该框架不仅考虑了过程的数据分析部分,而且还考虑了通过本体学和知识图模型的域知识的语义方面,作为框架模块。许多正在进行的XAI研究旨在为给定特征值如何促进模型决策的准确和语言说明。但是,提出的方法着重于提供数据挖掘模型中涉及的概念,算法和值的一致信息和定义。我们建立了一个农业计算本体论(Agricomo)来解释农业中挖掘的知识。 Agricomo具有精心设计的结构,包括适合农业和计算领域的广泛概念和转换。
Recent machine learning approaches have been effective in Artificial Intelligence (AI) applications. They produce robust results with a high level of accuracy. However, most of these techniques do not provide human-understandable explanations for supporting their results and decisions. They usually act as black boxes, and it is not easy to understand how decisions have been made. Explainable Artificial Intelligence (XAI), which has received much interest recently, tries to provide human-understandable explanations for decision-making and trained AI models. For instance, in digital agriculture, related domains often present peculiar or input features with no link to background knowledge. The application of the data mining process on agricultural data leads to results (knowledge), which are difficult to explain. In this paper, we propose a knowledge map model and an ontology design as an XAI framework (OAK4XAI) to deal with this issue. The framework does not only consider the data analysis part of the process, but it takes into account the semantics aspect of the domain knowledge via an ontology and a knowledge map model, provided as modules of the framework. Many ongoing XAI studies aim to provide accurate and verbalizable accounts for how given feature values contribute to model decisions. The proposed approach, however, focuses on providing consistent information and definitions of concepts, algorithms, and values involved in the data mining models. We built an Agriculture Computing Ontology (AgriComO) to explain the knowledge mined in agriculture. AgriComO has a well-designed structure and includes a wide range of concepts and transformations suitable for agriculture and computing domains.