Data Forecasting Models for Insurance Management Platforms Optimizing Policy

Kande, Jayanth (2025) Data Forecasting Models for Insurance Management Platforms Optimizing Policy. International Journal of Innovative Science and Research Technology, 10 (6): 25jun177. pp. 97-100. ISSN 2456-2165

Abstract

In the dynamic landscape of the insurance industry, leveraging data-driven insights has become pivotal for improving policy management and strategic decision-making. This study introduces innovative forecasting models specifically designed for insurance management platforms, aimed at optimizing policy performance, refining risk evaluation, and enhancing customer engagement (Nguyen, 2017) [1]. By integrating machine learning algorithms with sophisticated statistical methodologies, these models offer robust predictions of policy dynamics, customer behavior patterns, and claim likelihoods (Gupta et al., 2018) [2]. The research employs comprehensive analyses on real-world insurance datasets, showcasing notable advancements in predictive accuracy and operational productivity. These models not only streamline the decision-making process but also support proactive risk mitigation strategies, enabling insurers to respond swiftly to emerging trends. Furthermore, the application of predictive analytics facilitates personalized policy offerings, fostering higher customer satisfaction and loyalty (Roy & Verma, 2020) [3]. The study emphasizes the transformative role of data forecasting in reshaping insurance operations, driving profitability, and reducing uncertainty in risk-prone environments. Overall, the proposed approach highlights the potential of advanced analytics to revolutionize policy optimization, making insurance ecosystems more resilient and adaptive in a competitive market (Gupta et al., 2020) [4].

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