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A Regression-Based Share Market Prediction Model for Bangladesh

A Regression-Based Share Market Prediction Model for Bangladesh ArXiv ID: 2507.18643 “View on arXiv” Authors: Syeda Tasnim Fabiha, Rubaiyat Jahan Mumu, Farzana Aktar, B M Mainul Hossain Abstract Share market is one of the most important sectors of economic development of a country. Everyday almost all companies issue their shares and investors buy and sell shares of these companies. Generally investors want to buy shares of the companies whose market liquidity is comparatively greater. Market liquidity depends on the average price of a share. In this paper, a thorough linear regression analysis has been performed on the stock market data of Dhaka Stock Exchange. Later, the linear model has been compared with random forest based on different metrics showing better results for random forest model. However, the amount of individual significance of different factors on the variability of stock price has been identified and explained. This paper also shows that the time series data is not capable of generating a predictive linear model for analysis. ...

July 10, 2025 · 2 min · Research Team

Forecasting Cryptocurrency Staking Rewards

Forecasting Cryptocurrency Staking Rewards ArXiv ID: 2401.10931 “View on arXiv” Authors: Unknown Abstract This research explores a relatively unexplored area of predicting cryptocurrency staking rewards, offering potential insights to researchers and investors. We investigate two predictive methodologies: a) a straightforward sliding-window average, and b) linear regression models predicated on historical data. The findings reveal that ETH staking rewards can be forecasted with an RMSE within 0.7% and 1.1% of the mean value for 1-day and 7-day look-aheads respectively, using a 7-day sliding-window average approach. Additionally, we discern diverse prediction accuracies across various cryptocurrencies, including SOL, XTZ, ATOM, and MATIC. Linear regression is identified as superior to the moving-window average for perdicting in the short term for XTZ and ATOM. The results underscore the generally stable and predictable nature of staking rewards for most assets, with MATIC presenting a noteworthy exception. ...

January 16, 2024 · 2 min · Research Team

Application of Machine Learning in Stock Market Forecasting: A Case Study of Disney Stock

Application of Machine Learning in Stock Market Forecasting: A Case Study of Disney Stock ArXiv ID: 2401.10903 “View on arXiv” Authors: Unknown Abstract This document presents a stock market analysis conducted on a dataset consisting of 750 instances and 16 attributes donated in 2014-10-23. The analysis includes an exploratory data analysis (EDA) section, feature engineering, data preparation, model selection, and insights from the analysis. The Fama French 3-factor model is also utilized in the analysis. The results of the analysis are presented, with linear regression being the best-performing model. ...

December 31, 2023 · 2 min · Research Team