Riaz Ud Din’s research while affiliated with University of Engineering and Technology Peshawar and other places

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Publications (2)


Graphical overview of the proposed study
Brief Overview of the proposed Bitcoin prediction ACB-XDE framework
Proposed ACB-XDE detailed framework
Gating mechanism of LSTM
Component connection topology of LSTM

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A novel decision ensemble framework: Attention-customized BiLSTM and XGBoost for speculative stock price forecasting
  • Article
  • Full-text available

April 2025

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29 Reads

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2 Citations

Riaz Ud Din

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Salman Ahmed

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[...]

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Bader Alkhamees

Forecasting speculative stock prices is essential for effective investment risk management and requires innovative algorithms. However, the speculative nature, volatility, and complex sequential dependencies within financial markets present inherent challenges that necessitate advanced techniques. In this regard, a novel framework, ACB-XDE (Attention-Customized BiLSTM-XGB Decision Ensemble), is proposed for predicting the daily closing price of speculative stock Bitcoin-USD (BTC-USD). The proposed ACB-XDE framework integrates the learning capabilities of a customized Bi-directional Long Short-Term Memory (BiLSTM) model with a novel attention mechanism and the XGBoost algorithm. The customized BiLSTM leverages its learning capabilities to capture complex sequential dependencies and speculative market trends. Meanwhile, the new attention mechanism dynamically assigns weights to influential features based on volatility patterns, thereby enhancing interpretability and optimizing effective cost measures and volatility forecasting. Moreover, XGBoost handles nonlinear relationships and contributes to the proposed ACB-XDE framework’s robustness. Furthermore, the error reciprocal method improves predictions by iteratively adjusting model weights based on the difference between theoretical expectations and actual errors in the individual attention-customized BiLSTM and XGBoost models. Finally, the predictions from both the XGBoost and attention-customized BiLSTM models are concatenated to create a varied prediction space, which is then fed into the ensemble regression framework to improve the generalization capabilities of the proposed ACB-XDE framework. Empirical validation of the proposed ACB-XDE framework involves its application to the volatile Bitcoin market, utilizing a dataset sourced from Yahoo Finance (Bitcoin-USD, 10/01/2014 to 01/08/2023). The proposed ACB-XDE framework outperforms state-of-the-art models with a MAPE of 0.37%, MAE of 84.40, and RMSE of 106.14. This represents improvements of approximately 27.45%, 53.32%, and 38.59% in MAPE, MAE, and RMSE respectively, over the best-performing attention-BiLSTM. The proposed ACB-XDE framework presents a technique for informed decision-making in dynamic financial landscapes and demonstrates effectiveness in handling the complexities of BTC-USD data.

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Citations (1)


... Good Practices for Financial Time Series AI [17] identifies best practices for implementing explainability in AI-driven financial forecasting systems, emphasizing the importance of data quality and tailored methods for specific audiences while considering data properties. CAB-XDE Framework [38] details an innovative decision ensemble framework that combines customized attention BiLSTM with XGBoost for predicting speculative stock prices, validated through empirical analysis in the volatile Bitcoin market and showing superior performance compared to existing models. ...

Reference:

Integrating Deep Learning Models for Improved AI-Based Price Forecasting Accuracy
A novel decision ensemble framework: Attention-customized BiLSTM and XGBoost for speculative stock price forecasting