TY - JOUR
T1 - LEVERAGING MULTISOURCE HETEROGENEOUS DATA FOR FINANCIAL RISK PREDICTION
T2 - A NOVEL HYBRID-STRATEGY-BASED SELF-ADAPTIVE METHOD
AU - Wang, Gang
AU - Chen, Gang
AU - Zhao, Huimin
AU - Zhang, Feng
AU - Yang, Shanlin
AU - Lu, Tian
N1 - Publisher Copyright:
© 2021 University of Minnesota. All rights reserved.
PY - 2021/12
Y1 - 2021/12
N2 - Emerging phenomena of ubiquitous multisource data offer promising avenues for making breakthroughs in financial risk prediction. While most existing methods for financial risk prediction are based on a single information source, which may not adequately capture various complex factors that jointly influence financial risks, we propose a hybrid-strategy-based self-adaptive method to effectively leverage heterogeneous soft information drawn from a variety of sources. The method uses a proposed new feature-sparsity learning method to adaptively integrate multisource heterogeneous soft features with hard features and a proposed improved evidential reasoning rule to adaptively aggregate base classifier predictions, thereby alleviating both the declarative bias and the procedural bias of the learning process. Evaluation in two cases at the individual level (concerning borrowers at a P2P lending platform) and the company level (concerning listed companies in the Chinese stock market) showed that, compared with relying solely on hard features, effectively incorporating multisource heterogeneous soft features using our proposed method enabled earlier prediction of financial risks with desirable performance.
AB - Emerging phenomena of ubiquitous multisource data offer promising avenues for making breakthroughs in financial risk prediction. While most existing methods for financial risk prediction are based on a single information source, which may not adequately capture various complex factors that jointly influence financial risks, we propose a hybrid-strategy-based self-adaptive method to effectively leverage heterogeneous soft information drawn from a variety of sources. The method uses a proposed new feature-sparsity learning method to adaptively integrate multisource heterogeneous soft features with hard features and a proposed improved evidential reasoning rule to adaptively aggregate base classifier predictions, thereby alleviating both the declarative bias and the procedural bias of the learning process. Evaluation in two cases at the individual level (concerning borrowers at a P2P lending platform) and the company level (concerning listed companies in the Chinese stock market) showed that, compared with relying solely on hard features, effectively incorporating multisource heterogeneous soft features using our proposed method enabled earlier prediction of financial risks with desirable performance.
KW - Financial risk prediction
KW - adaptive aggregation
KW - adaptive integration
KW - ensemble learning
KW - hybrid learning strategy
KW - soft information
UR - https://www.scopus.com/pages/publications/85146929622
U2 - 10.25300/MISQ/2021/16118
DO - 10.25300/MISQ/2021/16118
M3 - 文章
AN - SCOPUS:85146929622
SN - 0276-7783
VL - 45
SP - 1949
EP - 1998
JO - MIS Quarterly: Management Information Systems
JF - MIS Quarterly: Management Information Systems
IS - 4
ER -