Assortment on the Bases of Big-Data Analytics: A Quantitative Analysis on Retail Industry

Sadia Shaikh, F. Sultan, M. Asim
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Abstract

Big-data analytics are treated as the future of technology and essential for the retail sector. The technology is especially beneficial for optimising daily operations and supply chain practices. However, there is a wide gap in the related literature in developing and Asian countries on this subject. On the other hand, retailing is one of the fastest-growing industries globally. Therefore, this study is specifically designed to understand the role of big data concerning the organised retail sector of Pakistan. The study’s primary objective is to assess the significance of technology in augmenting assortment strategies. However, the mediation of advanced algorithms and moderation of skilled data scientists are included in the research construct to increase research relevance to the pragmatic world. Results were determined by applying Partial least square structured equation modeling (PLS-SEM). The findings indicated that big data is a prolific constituent to optimise assortment in the retail sector of Pakistan. However, the technology would not produce the desired results without applying advanced algorithms. This study accentuates the actuality that advanced algorithms are essential to be analysed to use big-data most effectively to retrieve new information. Further studies may also be conducted in devising a comprehensive model which includes all the potent variables associated with store-layout design.
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基于大数据分析的分类:对零售业的定量分析
大数据分析被视为技术的未来,对零售业至关重要。该技术尤其有利于优化日常运营和供应链实践。然而,发展中国家和亚洲国家在这一问题上的相关文献存在很大差距。另一方面,零售业是全球增长最快的行业之一。因此,本研究旨在了解大数据在巴基斯坦有组织零售业中的作用。本研究的主要目的是评估技术在增加分类策略中的意义。然而,先进算法的中介和熟练数据科学家的调节被包括在研究结构中,以增加研究与实用世界的相关性。结果采用偏最小二乘结构方程模型(PLS-SEM)确定。研究结果表明,大数据是一个多产的组成部分,以优化分类在巴基斯坦的零售业。然而,如果不采用先进的算法,这项技术将无法产生预期的结果。这项研究强调了一个事实,即为了最有效地利用大数据检索新信息,分析先进的算法是必不可少的。还可以进行进一步的研究,以设计一个综合模型,其中包括与商店布局设计相关的所有有效变量。
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