TransBoost: A Boosting-Tree Kernel Transfer Learning Algorithm for Improving Financial Inclusion
Yiheng Sun, Tian Lu, Cong Wang, Yuan Li, Huaiyu Fu, Jingran Dong,, Yunjie Xu

TL;DR
TransBoost is a novel transfer learning algorithm that combines tree-based models and kernel methods to improve financial risk prediction, especially for new users, thereby enhancing financial inclusion with high accuracy and efficiency.
Contribution
It introduces a new transfer learning algorithm with a parallel tree structure and efficient weights updating, tailored for high-dimensional, sparse financial data, with theoretical guarantees.
Findings
Outperforms state-of-the-art transfer learning algorithms in accuracy.
Shows robustness to data sparsity and high dimensionality.
Enables serving more users, improving financial inclusion.
Abstract
The prosperity of mobile and financial technologies has bred and expanded various kinds of financial products to a broader scope of people, which contributes to advocating financial inclusion. It has non-trivial social benefits of diminishing financial inequality. However, the technical challenges in individual financial risk evaluation caused by the distinct characteristic distribution and limited credit history of new users, as well as the inexperience of newly-entered companies in handling complex data and obtaining accurate labels, impede further promoting financial inclusion. To tackle these challenges, this paper develops a novel transfer learning algorithm (i.e., TransBoost) that combines the merits of tree-based models and kernel methods. The TransBoost is designed with a parallel tree structure and efficient weights updating mechanism with theoretical guarantee, which enables…
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Code & Models
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Taxonomy
TopicsMicrofinance and Financial Inclusion · Artificial Intelligence in Healthcare · Recommender Systems and Techniques
Methodstravel james
