Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market

Objective: This study's main goal is to investigate how deep learning approaches may be used to analyze stock market performance. The complex patterns and nonlinear interactions present in stock market data may be difficult to completely capture using traditional approaches, which are mostly b...

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Main Authors: Ali Raza, Mubeen Javed, Adham Fayad, Asfand Yar Khan
Format: Article
Language:English
Published: CSRC Publishing 2023-09-01
Series:Journal of Accounting and Finance in Emerging Economies
Subjects:
Online Access:https://publishing.globalcsrc.org/ojs/index.php/jafee/article/view/2739
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author Ali Raza
Mubeen Javed
Adham Fayad
Asfand Yar Khan
author_facet Ali Raza
Mubeen Javed
Adham Fayad
Asfand Yar Khan
author_sort Ali Raza
collection DOAJ
description Objective: This study's main goal is to investigate how deep learning approaches may be used to analyze stock market performance. The complex patterns and nonlinear interactions present in stock market data may be difficult to completely capture using traditional approaches, which are mostly based on statistical models. Methodology: Our work uses a large dataset of historical stock prices, macroeconomic indices, and other crucial financial factors to address this. Simple Moving Averages (SMA) are one of the feature engineering approaches that are used to combine fundamental and technical indicators. To capture the temporal dynamics of the stock market, the study goes further into a variety of deep learning architectures, including as long short-term memory (LSTM) networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs). Findings: The results show that thorough feature engineering combined with deep learning approaches may effectively capture the complexity of the stock market and provide forecasts that are more accurate. Implications: This highlights how deep learning may revolutionize financial market research and points to a paradigm change toward more trustworthy instruments for investors and decision-makers.
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spelling doaj.art-90ab13acc0f843ed8e36baa5628b053f2023-10-24T22:11:08ZengCSRC PublishingJournal of Accounting and Finance in Emerging Economies2519-03182518-84882023-09-019310.26710/jafee.v9i3.2739Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock MarketAli Raza0Mubeen Javed1Adham Fayad2Asfand Yar Khan3Comsats University Islamabad, PakistanComsats University Islamabad, PakistanDe Montfort University, UAEUniversity of Engineering & Technology, Peshawar, Pakistan Objective: This study's main goal is to investigate how deep learning approaches may be used to analyze stock market performance. The complex patterns and nonlinear interactions present in stock market data may be difficult to completely capture using traditional approaches, which are mostly based on statistical models. Methodology: Our work uses a large dataset of historical stock prices, macroeconomic indices, and other crucial financial factors to address this. Simple Moving Averages (SMA) are one of the feature engineering approaches that are used to combine fundamental and technical indicators. To capture the temporal dynamics of the stock market, the study goes further into a variety of deep learning architectures, including as long short-term memory (LSTM) networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs). Findings: The results show that thorough feature engineering combined with deep learning approaches may effectively capture the complexity of the stock market and provide forecasts that are more accurate. Implications: This highlights how deep learning may revolutionize financial market research and points to a paradigm change toward more trustworthy instruments for investors and decision-makers. https://publishing.globalcsrc.org/ojs/index.php/jafee/article/view/2739Advanced Deep LearningPredictive ModellingStock Market TrendsPerformance Metrics of Stock Market
spellingShingle Ali Raza
Mubeen Javed
Adham Fayad
Asfand Yar Khan
Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
Journal of Accounting and Finance in Emerging Economies
Advanced Deep Learning
Predictive Modelling
Stock Market Trends
Performance Metrics of Stock Market
title Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
title_full Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
title_fullStr Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
title_full_unstemmed Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
title_short Advanced Deep Learning-Based Predictive Modelling for Analyzing Trends and Performance Metrics in Stock Market
title_sort advanced deep learning based predictive modelling for analyzing trends and performance metrics in stock market
topic Advanced Deep Learning
Predictive Modelling
Stock Market Trends
Performance Metrics of Stock Market
url https://publishing.globalcsrc.org/ojs/index.php/jafee/article/view/2739
work_keys_str_mv AT aliraza advanceddeeplearningbasedpredictivemodellingforanalyzingtrendsandperformancemetricsinstockmarket
AT mubeenjaved advanceddeeplearningbasedpredictivemodellingforanalyzingtrendsandperformancemetricsinstockmarket
AT adhamfayad advanceddeeplearningbasedpredictivemodellingforanalyzingtrendsandperformancemetricsinstockmarket
AT asfandyarkhan advanceddeeplearningbasedpredictivemodellingforanalyzingtrendsandperformancemetricsinstockmarket