Classification Algorithms Analysis in the Forest Fire Detection Problem

M. D. Molovtsev, I. Sineva
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引用次数: 7

Abstract

The development of information technology allows applying complex mathematical algorithms. For example, machine learning (ML) procedures are used in almost all humans life areas: smart home systems, online recommendation systems intelligent chatbots and so on. This creates a huge demand for specialists in data analysis and ML. Modern data analysis packages often do not require deep knowledge from a specialist, which allows to apply all ML algorithms without a deep understanding of their work. However, the main problem is that the data is not suitable for the algorithm and as a result, the algorithm cannot detect all the patterns or does it incorrectly. This situation can be acceptable in pet projects and is completely unacceptable in cases where the algorithm error costs a lot of money or human lives. In this paper the analysis of ML algorithms and the possibility of their application to forest fires data are done.
森林火灾探测问题中的分类算法分析
信息技术的发展使得应用复杂的数学算法成为可能。例如,机器学习(ML)过程几乎应用于人类生活的所有领域:智能家居系统、在线推荐系统、智能聊天机器人等等。这就对数据分析和机器学习方面的专家产生了巨大的需求。现代数据分析软件包通常不需要专家的深入知识,这就允许在不深入了解其工作的情况下应用所有机器学习算法。然而,主要的问题是数据不适合算法,因此,算法不能检测到所有的模式或做得不正确。这种情况在宠物项目中是可以接受的,但在算法错误导致大量金钱或人命损失的情况下是完全不可接受的。本文分析了机器学习算法及其在森林火灾数据中应用的可能性。
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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