预测印度恰蒂斯加尔邦赖布尔市蔬菜摊贩位置的Logistic回归

Sushmita Chakraborty, Abir Bandyopadhyay, Swasti Sthapak
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引用次数: 0

摘要

城市规划在保证城市的功能性、可达性和适应性以满足其多样化人口和各种官方和非正式经济活动的需求方面起着关键作用。这项工作的主要目标是研究机器学习技术在印度赖布尔市城市环境中确定蔬菜摊贩最佳地点的应用。虽然在以前的研究中已使用逻辑回归来解决诸如土壤侵蚀、土地易感性测绘以及确定卫生设施和采矿勘探的潜在地点等问题,但该模型尚未应用于确定蔬菜摊贩的合适地点。研究上的这一差距如果得到解决可能是有益的,特别是在印度,那里的许多城市居民严重依赖蔬菜商贩来满足他们的饮食需求。本文的重点是评估模型的可靠性,并鼓励其在类似场景下的实施,突出其效率和适应性,并在本研究中进行了评估。采用分层随机抽样技术从赖布尔市的四个不同地区收集数据。随后,使用逻辑回归机器学习技术对收集到的数据进行分析,目的是进行预测。分析结果令人印象深刻,该模型成功预测了总共50个位置中的44个,准确率达到88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Logistic regression for predicting the location of vegetable vendors in the city of Raipur, Chhattisgarh, India
Urban planning plays a pivotal role in guaranteeing the functionality, accessibility, and adaptability of cities to meet the needs of their diverse population and various official and informal economic activities. The primary objective of this work is to investigate the application of machine learning techniques in the identification of optimal places for vegetable vendors within the urban context of Raipur City, India. While logistic regression has been used in previous studies to address issues such as soil erosion, land susceptibility mapping, and identifying potential sites for health facilities and mining exploration, this model has yet to be applied to determining suitable locations for vegetable vendors. This gap in research could be beneficial if addressed, particularly in India, where many city residents rely heavily on vegetable vendors for their dietary needs. The paper’s main focus is on evaluating the reliability of the model and encouraging its implementation in similar scenarios, highlighting its efficiency and adaptability, which are also evaluated in this study. A stratified random sampling technique was implemented to collect data from four different regions of Raipur City. Subsequently, the gathered data was subjected to analysis employing the logistic regression machine learning technique, with the objective of making predictions. The results obtained from the analysis were highly impressive, as the model successfully predicted 44 out of the total 50 locations with an accuracy rate of 88%.
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