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BOOK CHAPTERS – CRC Press 2024 : CALL FOR BOOK CHAPTERS – CRC Press (Taylor & Francis Group)AI in Demand Forecasting for Ecommerce Application | |||||||||||||
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Call For Papers | |||||||||||||
Dear Professor (s),
Greetings of the Day! It is our pleasure to invite you to contribute to the book entitled "AI in Demand Forecasting for Ecommerce Application” will be published by CRC Press (Taylor & Francis Group). Co-authored chapters are also welcome. I am certain that your contribution to this topic and/or other related research areas would make an excellent addition to this publication. All the chapters of the book will be published by CRC Press and all Taylor & Francis publications have direct feed to Scopus. Note: There is no publication charge. It is completely free. Abstract Submission: 23/08/2024 Notification Date: 25/09/2024 Full chapter Submission: 04/11/2024 Notification of acceptance: 30/12/2024 Submission Procedure: Please submit your full chapter (fitted in scope) having minimum 15 pages and maximum 25 pages. Chapter Submission Mail ID: crcbook.aidemandforecasting@gmail.com Please feel free to contact on: bhuvaneshwari.p@manipal.edu/jayita.saha@manipal.edu We welcome book chapter contribution on the following (but not limited to) topics: 1. Foundations of Demand Forecasting: Traditional Methods vs. AI Approaches 2. Applications of AI Techniques for Enhanced Demand Prediction in e-commerce 3. Reinforcement and Ensemble Learning Techniques for Robust Demand Forecasting in e-commerce 4. Challenges and Opportunities in Implementing AI Techniques for Demand Forecasting 5. Application of Causal inference in forecasting of demands in ecommerce 6. Emphasize the importance of Causal inference to build personalized recommendation system 7. AI techniques to build dynamic model based on causal relationship 8. Optimization Techniques for Improving AI-driven Demand Forecasting in E-commerce 9. Optimized solution to allocate resource applying causal inference 10. Future Directions and Emerging Trends in AI-driven Demand Forecasting for E-commerce 11. Ethical Considerations and Responsible AI Practices in Demand Forecasting 12. Case Studies and Real-world Applications of AI in E-commerce Demand Forecasting |
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