Wrapping practical problems into a machine learning framework: using water pipe failure prediction as a case study

Jianlong Zhou, Jinjun Sun, Yang Wang, Fang Chen
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引用次数: 7

Abstract

Despite the recognised value of machine learning (ML) techniques and high expectation of applying ML techniques within various applications, users often find it difficult to effectively apply ML techniques in practice because of complicated interfaces between ML algorithms and users. This paper presents a work flow of wrapping practical problems into an ML framework. The water pipe failure prediction is used as a case study to show that the applying process can be divided into various steps: obtain domain data, interview with domain experts, clean/pre-process and preview original domain data, extract ML features, set up ML models, explain ML results and make decisions, as well as make feedback to the system based on decision making. In this process, domain experts and ML developers need to collaborate closely in order to make this workflow more effective.
将实际问题包装到机器学习框架中:以水管故障预测为案例研究
尽管人们认识到机器学习(ML)技术的价值,并对在各种应用中应用ML技术抱有很高的期望,但由于ML算法和用户之间复杂的接口,用户经常发现很难在实践中有效地应用ML技术。本文提出了一个将实际问题包装到机器学习框架中的工作流程。以水管故障预测为例,表明应用过程可分为获取领域数据、采访领域专家、清理/预处理和预览原始领域数据、提取机器学习特征、建立机器学习模型、解释机器学习结果并做出决策以及根据决策向系统反馈等多个步骤。在这个过程中,领域专家和机器学习开发人员需要密切合作,以使这个工作流程更有效。
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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