A machine learning-based assessments of customer satisfaction levels in Indian Postal Services (ML-ACSLIPS) for selected Tamilnadu districts from social media content

IF 0.6 Q4 BUSINESS, FINANCE
T. Sangeetha, B. Subatra
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Abstract

The Indian Postal Services (IPSs) have above 155,333 post offices distributed globally. They are one of the most known and established government-owned institutions with sizable customer bases. They provide accessible and affordable services in India thanks to the unrivalled postal systems with various new services added in the last decades which include money transfers, distribution of mutual funds, and mail/parcel deliveries. IPSs have positioned themselves as dependable agencies for the Government of India. It has a competitive advantage of geographical accessibility. The system has also established centralized core banking solutions with alternative delivery channels enabling everywhere, anytime banking settings in India. Since the current marketplaces focus on clientele; businesses need to regard them as profit-making entities creating needs for high-quality services and management essential for customer satisfaction and retention. Globalization has added to acute competition to IPSs making it imperative to improve the overall quality of their services. This study’s goal is to identify the primary drivers of consumer happiness with IPSs. Since social media is the most widely used for views, references, and product information, this study effort suggests a system based on social media data called Machine learning-based Assessments of Customer Satisfaction Levels in Indian Postal Services (ML-ACSLIPS). Regression analysis and machine learning techniques (MLTs) were used in this study to examine Indian customer satisfaction levels in IPSs.
基于机器学习的印度邮政服务客户满意度评估(ML-ACSLIPS)从社交媒体内容选定的泰米尔纳德邦地区
印度邮政服务(IPSs)在全球拥有超过155,333个邮局。他们是最知名和最成熟的国有机构之一,拥有庞大的客户基础。他们在印度提供方便和负担得起的服务,这要归功于无与伦比的邮政系统,在过去几十年里增加了各种新服务,包括转账、共同基金的分配和邮件/包裹递送。ips将自己定位为印度政府的可靠机构。它具有地理可达性的竞争优势。该系统还建立了集中的核心银行解决方案,提供可选择的交付渠道,使印度随时随地的银行设置成为可能。由于目前的市场专注于客户;企业需要将它们视为盈利实体,创造对高质量服务和管理的需求,这对客户满意度和保留率至关重要。全球化加剧了IPSs的激烈竞争,因此必须提高其服务的全面质量。本研究的目的是确定消费者满意度与ips的主要驱动因素。由于社交媒体是最广泛使用的观点、参考和产品信息,本研究提出了一个基于社交媒体数据的系统,称为基于机器学习的印度邮政服务客户满意度评估(ML-ACSLIPS)。本研究使用回归分析和机器学习技术(mlt)来检查ips中印度客户的满意度水平。
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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