Adaptations of Explainable Artificial Intelligence (XAI) to Agricultural Data Models with ELI5, PDPbox, and Skater using Diverse Agricultural Worker Data
Shinji Kawakura, M. Hirafuji, S. Ninomiya, R. Shibasaki
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引用次数: 3
Abstract
We use explainable artificial intelligence (XAI) based on Explain Like I’m 5 (ELI5), Partial Dependency Plot box (PDPbox), and Skater to analyze diverse physical agricultural (agri-) worker datasets. We have developed various promising body-sensing systems to enhance agri-technical advancement, training and worker development, and security. This includes wearable sensing systems (WSSs) that can capture real-time three-axis acceleration and angular velocity data related to agri-worker motion by analyzing human dynamics and statistics in different agri-environments, such as fields, meadows, and gardens. After investigating the obtained time-series data using a novel program written in Python, we discuss our findings and recommendations with real agri-workers and managers. In this study, we use XAI and visualization to analyze diverse data of experienced and inexperienced agri-workers to develop an applied method for agri-directors to train agri-workers.
我们使用基于Explain Like I 'm 5 (ELI5)、Partial Dependency Plot box (PDPbox)和Skater的可解释人工智能(XAI)来分析各种物理农业(agri-)工人数据集。我们开发了各种有前途的身体传感系统,以促进农业技术进步、培训和工人发展以及安全。这包括可穿戴传感系统(wss),它可以通过分析不同农业环境(如田地、草地和花园)中的人体动力学和统计数据,捕获与农业工人运动相关的实时三轴加速度和角速度数据。在使用Python编写的新程序调查获得的时间序列数据后,我们与真正的农业工人和管理人员讨论了我们的发现和建议。在本研究中,我们使用XAI和可视化分析不同的数据,有经验和没有经验的农业工人,以开发一种适用于农业主管培训农业工人的方法。