A Learning and Control Perspective for Microfinance
- URL: http://arxiv.org/abs/2207.12631v1
- Date: Tue, 26 Jul 2022 03:35:18 GMT
- Title: A Learning and Control Perspective for Microfinance
- Authors: Christian Kurniawan, Xiyu Deng, Adhiraj Chakraborty, Assane Gueye,
Niangjun Chen and Yorie Nakahira
- Abstract summary: Many applicants in developing areas cannot provide adequate information required by the financial institution to make a lending decision.
We formulate the decision-making of microfinance into a rigorous optimization-based framework involving learning and control.
- Score: 0.19573380763700707
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Microfinance in developing areas such as Africa has been proven to improve
the local economy significantly. However, many applicants in developing areas
cannot provide adequate information required by the financial institution to
make a lending decision. As a result, it is challenging for microfinance
institutions to assign credit properly based on conventional policies. In this
paper, we formulate the decision-making of microfinance into a rigorous
optimization-based framework involving learning and control. We propose an
algorithm to explore and learn the optimal policy to approve or reject
applicants. We provide the conditions under which the algorithms are guaranteed
to converge to an optimal one. The proposed algorithm can naturally deal with
missing information and systematically tradeoff multiple objectives such as
profit maximization, financial inclusion, social benefits, and economic
development. Through extensive simulation of both real and synthetic
microfinance datasets, we showed our proposed algorithm is superior to existing
benchmarks. To the best of our knowledge, this paper is the first to make a
connection between microfinance and control and use control-theoretic tools to
optimize the policy with a provable guarantee.
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