Emerging Trends in AI-Based Stock Market Prediction: A Comprehensive and Systematic Review †
Abstract
:1. Introduction
2. Literature Review
3. Results
4. Observations and Discussion
5. Limitations, Future Scope, and Challenges
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Year | Objective | Dataset | F* | Techniques | PT* | Metrics | Results | RG* | R* |
---|---|---|---|---|---|---|---|---|---|
2023 | SM* prediction | NA | NA | ML, ANN, SVM, NN, LSTM | NA | NA | High accuracy | NA* | [1] |
2023 | Stock price, trend prediction | NA | Price, Trend | BPNN, CNN, GRU, LSTM | NA | Accuracy, Error | High accuracy | NA | [2] |
2023 | Stock prediction | News | Price | ML, MLP, SVM, LSTM, ANN | M* | Accuracy | High accuracy | Market data and text data can lead to more accuracy | [3] |
2023 | Enhancing stock market anomalies | NA | Profit | ML | M | Profit margin | Fitness of model | The factor zoo | [4] |
2022 | ML models’ stock market prediction | NA | NA | ML, ANN, SVM, LSTM | NA | NA | NN working efficiently in depth | NA | [5] |
2023 | ML trading system for the SM | NASDAQ | Price, Trend | ML, NPMM, XGBoost | A* | Accuracy | Labelling is found productive | NA | [6] |
2023 | DRL for stock portfolio optimization | NA | Portfolio Optimization | DL, RL, DDPG | A, M, W* | Sharpe ratio | Algorithms outperformed by the suggested methods | Dynamically modifies the weight | [7] |
2023 | ML sentiment analysis and SM reactions | COVID-19 News, S&P 500 | Correlation | ML, NLP, BERT | A | Sentiment scores | Positively correlated and statistically significant | Brief window examining only | [8] |
2022 | AI-based day-ahead SM forecasting | China Stock Market | Profit | LSTM, SFLA | D | Profit margin | LSTM, AC-SFLA has high efficiency | NA | [9] |
2023 | Stock prediction and analysis | SSE | Price | LSTM | D* | Error | MAE of 0.029, MAPE of 0.61%, and RMSE of 0.037 | Refining the model architecture | [10] |
2022 | Automatic stock selection like fund managers | China’s A Share Market | Profit | ML, Scoring, Screening Model | NA | Profit margin | P-return is a notable increase | NA | [11] |
2022 | SM prediction | BSE, NSE | Profit | ML, K-NN, LR, SVR, DTR, LSTM | M | Accuracy | The LSTM is outperforming | In time series data, ML appears to produce less reliable | [12] |
2022 | GNN in SMP | NA | Price | GNN, GCN, GAT, GNA | NA | NA | GCN and GAT are the most frequently utilized | NA | [14] |
2021 | SM prediction based on ML Algorithms | NASDAQ, NYSE, NIKKEI, FTSE | Accuracy | DM, RF, SVM, ANN, Bagging, AdaBoost, Decision Trees, K-NN | NA | Accuracy | RF, Bagging with a leaked dataset results in high performance | NA | [15] |
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Jain, R.; Vanzara, R. Emerging Trends in AI-Based Stock Market Prediction: A Comprehensive and Systematic Review. Eng. Proc. 2023, 56, 254. https://doi.org/10.3390/ASEC2023-15965
Jain R, Vanzara R. Emerging Trends in AI-Based Stock Market Prediction: A Comprehensive and Systematic Review. Engineering Proceedings. 2023; 56(1):254. https://doi.org/10.3390/ASEC2023-15965
Chicago/Turabian StyleJain, Rahul, and Rakesh Vanzara. 2023. "Emerging Trends in AI-Based Stock Market Prediction: A Comprehensive and Systematic Review" Engineering Proceedings 56, no. 1: 254. https://doi.org/10.3390/ASEC2023-15965
APA StyleJain, R., & Vanzara, R. (2023). Emerging Trends in AI-Based Stock Market Prediction: A Comprehensive and Systematic Review. Engineering Proceedings, 56(1), 254. https://doi.org/10.3390/ASEC2023-15965