Deep Bidirectional Temporal Modeling with Boosted Rule Optimization for Dynamic Ride Demand Forecasting in Smart Cities

Authors

  • M. Madhurya Author
  • B. Ravikumar Author
  • Fhysuddin Shaik Author
  • Ch. Pavani Author

DOI:

https://doi.org/10.62643/ijerst.v22i2.3234

Abstract

Driver attrition has become a major challenge for ride-hailing and transportation-based organizations, 
as it directly impacts operational performance, workforce stability, and customer satisfaction. Early 
prediction of employee attrition enables organizations to implement proactive retention strategies and 
reduce workforce turnover. Traditional attrition prediction methods mainly relied on statistical analysis, 
manual evaluation, and conventional machine learning techniques, which often struggled to capture 
hidden relationships and complex feature interactions within high-dimensional employee datasets. To 
address these limitations, the proposed system introduces a hybrid deep learning and ensemble learning 
framework for intelligent driver attrition prediction. The proposed BiLSTM-BRC model utilizes a 
Bidirectional Long Short-Term Memory (BiLSTM) network to perform advanced feature extraction 
from structured employee data by learning forward and backward feature dependencies. The extracted 
deep features are then processed using a Boosted Random Committee (BRC) ensemble classifier 
consisting of Random Forest (RF), Gradient Boosting (GB), and Decision Tree (DT) classifiers 
combined through a voting mechanism for robust classification. In addition to the extension model, 
several comparative machine learning algorithms including Random Forest Classifier, Gradient 
Boosting Classifier, Support Vector Classifier (SVC), and the Greedy LSTM Tree model are also 
implemented and evaluated for performance analysis. Experimental results demonstrate that the 
proposed BiLSTM-BRC extension model achieves superior classification performance with 
approximately 99% prediction accuracy, outperforming existing baseline and hybrid models on the 
employee attrition dataset. The complete system is implemented using the Flask web framework with 
integrated modules for user authentication, model training, prediction analysis, and performance 
visualization, providing an interactive and efficient web-based HR analytics platform. 

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Published

31-05-2026

How to Cite

Deep Bidirectional Temporal Modeling with Boosted Rule Optimization for Dynamic Ride Demand Forecasting in Smart Cities. (2026). International Journal of Engineering Research and Science & Technology, 22(2), 3043 - 3055. https://doi.org/10.62643/ijerst.v22i2.3234