Developing a Predictive Model Using Logistic Regression to Portend the Intention to Go Cashless in Mumbai Using Constructs of Technology Readiness Index

B. Sharma
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Abstract

The paper is an attempt to understand barriers and drivers of cashless transaction and using this understanding to finally develop a model to predict the propensity of an individual residing in Mumbai, an Indian metropolis, to adopt cashless transaction. The understanding and the model is based on the variables espoused by Theory of Technology Readiness Index. The data on the variables were collected through a self administered survey of 815 residents of Mumbai. The model is built using binary logistic regression. The model increases the classification accuracy by 22 points (44 percent). All the variables of the theory of technology readiness are significant except the variable which measures the innovation index of an individual. The variables of insecurity and discomfort are more useful in classification as compared to innovation and optimism. The developed model can be used by marketers to target customers who are pro cashless and vice versa. The finding also gives the policy makers a clue of the barriers to adopt cashless transaction in Mumbai.
利用技术就绪指数构建Logistic回归预测模型,预测孟买居民无现金化意愿
本文试图了解无现金交易的障碍和驱动因素,并利用这种理解最终开发一个模型来预测居住在印度大都市孟买的个人采用无现金交易的倾向。这种理解和模型是基于技术准备指数理论所支持的变量。变量的数据是通过对孟买815名居民的自我管理调查收集的。该模型采用二元逻辑回归建立。该模型将分类精度提高了22点(44%)。技术准备度理论中除衡量个体创新指数的变量外,其他变量均显著。与创新和乐观相比,不安全感和不舒适感这两个变量在分类中更有用。开发的模型可以被营销人员用来瞄准那些支持无现金的客户,反之亦然。这一发现还为政策制定者提供了在孟买采用无现金交易的障碍的线索。
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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