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Evaluating The Performance Of Garch Family Models In Estimating Investment Risk And Volatility: A Comparative Analysis Of Sensex And Nifty Index In India

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  • SANTOSH KUMAR

    (DEPARTMENT OF COMMERCE, D. S. COLLEGE, KATIHAR (UNDER PURNEA UNIVERSITY, PURNIA), BIHAR, INDIA, POSTAL CODE – 854105)

  • MD. ALAMGIR

    (DEPARTMENT OF APPLIED ECONOMICS AND COMMERCE, PATNA UNIVERSITY, PATNA)

  • BIRAU RAMONA

    (UNIVERSITY OF CRAIOVA, "EUGENIU CARADA" DOCTORAL SCHOOL OF ECONOMIC SCIENCES, CRAIOVA, ROMANIA)

  • BHARAT KUMAR MEHER

    (PG DEPARTMENT OF COMMERCE, PURNEA UNIVERSITY, PURNIA, BIHAR, INDIA, POSTAL CODE – 854301)

  • ABHISHEK ANAND

    (PG DEPARTMENT OF ECONOMICS, PURNEA UNIVERSITY, PURNIA, BIHAR, INDIA, POSTAL CODE – 854301)

  • NIOATA (CHIREAC) ROXANA-MIHAELA

    (UNIVERSITY OF CRAIOVA, "EUGENIU CARADA" DOCTORAL SCHOOL OF ECONOMIC SCIENCES, CRAIOVA, ROMANIA)

  • CIRJAN NADIA TUDORA

    (NATIONAL AGENCY FOR FISCAL ADMINISTRATION (ANAF), REGIONAL DIRECTORATE GENERAL OF PUBLIC FINANCE CRAIOVA)

Abstract

In order to evaluate and estimate significant aspects of time series data, various models with varying degrees of variation have been built in the last few years. The overarching goal of study is to examine the variance dynamics of several Indian stock market indexes using Normal and Students-t distributions. The sample data spans a long time period (more than 40 years), from April 1979 to May 2023, and includes dramatic happenings. The econometric method relies heavily on the GARCH models and other statistical investigations. The outcomes contribute to the growing body of knowledge in the field. The possible rewards and risks of an investment are the focus of this empirical study. The results encompass the dynamics of financial series, volatility sketching, a statistical and GARCH model feature assessment, and the fitness of series returns. This opens the door to different assessments of the Indian financial market.

Suggested Citation

  • Santosh Kumar & Md. Alamgir & Birau Ramona & Bharat Kumar Meher & Abhishek Anand & Nioata (Chireac) Roxana-Mihaela & Cirjan Nadia Tudora, 2024. "Evaluating The Performance Of Garch Family Models In Estimating Investment Risk And Volatility: A Comparative Analysis Of Sensex And Nifty Index In India," Annals - Economy Series, Constantin Brancusi University, Faculty of Economics, vol. 3, pages 222-238, June.
  • Handle: RePEc:cbu:jrnlec:y:2024:v:3:p:222-238
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    References listed on IDEAS

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