An Comparative Analysis about KYC on a Recommendation System Toward Agentic Recommendation System
It addresses recommendation accuracy for financial platforms using KYC data, but appears incremental as it compares existing methods on new data without claiming major breakthroughs.
This research tackled the problem of improving recommendation systems in the financial KYC domain by evaluating an agentic AI-based system across five content verticals, showing performance gains measured by nDCG at different truncation levels.
This research presents a cutting-edge recommendation system utilizing agentic AI for KYC (Know Your Customer in the financial domain), and its evaluation across five distinct content verticals: Advertising (Ad), News, Gossip, Sharing (User-Generated Content), and Technology (Tech). The study compares the performance of four experimental groups, grouping by the intense usage of KYC, benchmarking them against the Normalized Discounted Cumulative Gain (nDCG) metric at truncation levels of $k=1$, $k=3$, and $k=5$. By synthesizing experimental data with theoretical frameworks and industry benchmarks from platforms such as Baidu and Xiaohongshu, this research provides insight by showing experimental results for engineering a large-scale agentic recommendation system.