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Prediction of Stock Performance by Using Logistic Regression Model: Evidence from Pakistan Stock Exchange (PSX)

Author

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  • Syed Shahan Ali
  • Muhammad Mubeen
  • Irfan Lal
  • Adnan Hussain

Abstract

The key purpose behind the study is to use logistic regression model to predict stock performance. For this purpose different financial and accounting ratios were used as independent variables and stock performance (either “good” or “poor”) as dependent variable. The result shows that financial and accounting ratios significantly predict the stock performance. Our study consists on the sample period of annual data from 2011-2015 and comprises of 109 listed non-financial firms of Pakistan’s Stock Exchange (PSX). Our sample was shortlisted on the basis of available data of Market Capitalization. Our research examines sales growth, debt to equity ratio, book to price ratio, earning per share, return on equity and current ratio for the prediction of stock performance. The findings indicate that our prediction was 89.77 percent accurate for prediction good as well as bad performance of stock. Although we did not consider macroeconomic variable to forecast stock return performance but our six firm specific accounting and financial ratios were good enough to predict stock performance. This study shows that Logistic regression model can be used by investors, individual as well as institutions or fund managers to enhance their ability to predict “good or poor” stock.

Suggested Citation

  • Syed Shahan Ali & Muhammad Mubeen & Irfan Lal & Adnan Hussain, 2018. "Prediction of Stock Performance by Using Logistic Regression Model: Evidence from Pakistan Stock Exchange (PSX)," Asian Journal of Empirical Research, Asian Economic and Social Society, vol. 8(7), pages 247-258.
  • Handle: RePEc:asi:ajoerj:v:8:y:2018:i:7:p:247-258:id:4221
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    Cited by:

    1. Gaurang Sonkavde & Deepak Sudhakar Dharrao & Anupkumar M. Bongale & Sarika T. Deokate & Deepak Doreswamy & Subraya Krishna Bhat, 2023. "Forecasting Stock Market Prices Using Machine Learning and Deep Learning Models: A Systematic Review, Performance Analysis and Discussion of Implications," IJFS, MDPI, vol. 11(3), pages 1-22, July.
    2. Yushen Kong & Micheal Owusu-Akomeah & Henry Asante Antwi & Xuhua Hu & Patrick Acheampong, 2019. "Evaluation of the robusticity of mutual fund performance in Ghana using Enhanced Resilient Backpropagation Neural Network (ERBPNN) and Fast Adaptive Neural Network Classifier (FANNC)," Financial Innovation, Springer;Southwestern University of Finance and Economics, vol. 5(1), pages 1-12, December.
    3. Federico Mecchia & Marcellino Gaudenzi, 2022. "The dynamics of the prices of the companies of the STOXX Europe 600 Index through the logit model and neural network," Papers 2206.09899, arXiv.org.

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