Vinodkumar Surasani Reviewer
07 Mar 2025 01:29 PM

Strengths:
- Relevance & Timeliness: The paper effectively highlights the growing role of machine learning in finance, covering various applications such as fraud detection, algorithmic trading, and credit risk assessment.
- Comprehensive Coverage: The discussion includes a broad range of ML techniques (e.g., supervised, unsupervised, reinforcement learning), providing a solid foundation for understanding their use in financial applications.
- Use of Case Studies: Including real-world case studies enhances the practical relevance of the discussion and helps contextualize the impact of ML on financial decision-making.
- Well-Structured Flow: The paper follows a logical structure, progressing from fundamental ML concepts to specific applications, challenges, and future trends.
Areas for Improvement:
- Lack of Quantitative Analysis: The paper could benefit from additional empirical data, such as comparative performance metrics of ML models in financial applications.
- Recent Advances & Trends: The paper should incorporate the latest advancements in deep learning, natural language processing (NLP), and explainable AI (XAI) within the financial sector.
Vinodkumar Surasani Reviewer
28 Feb 2025 07:40 PM