HomeJournalsTBFLIVol. 1, Iss. 2Using Alternative Data and Machine Learning for Pr
tbfli
Research ArticleTransactions on Banking, Finance, and Leadership Informatics

Volume 1, Issue 2 · 25 October 2025

ISSN: 3067-5804 · E-ISSN: 3067-5812

Using Alternative Data and Machine Learning for Predictive Credit Scoring to Promote Financial Inclusion in the U.S.

Article ID:tbfli_25003

Abstract

Artificial intelligence is rapidly transforming a wide range of industries in the United States, with the financial sector being one of the most profoundly impacted. One notable advancement is the development of AI-driven credit scoring models that use machine learning and large volumes of 25 October, 2025 (Published Online) data to evaluate individual or business credit risk. Unlike traditional credit evaluation methods, which typically rely on financial history, employment records, and credit reports, AI-based Artificial intelligence, Credit scoring, records, social media behavior, and even geolocation data. This innovation offers significant Financial inclusion, Machine potential to expand financial inclusion, especially for underserved communities such as gig learning, Alternative data, Ethical workers, rural residents, and individuals with limited credit history. In the United States, where concerns. access to conventional financial systems still excludes many due to rigid scoring models, AI offers a more comprehensive view of creditworthiness. However, the growing reliance on algorithmic decision-making in finance also raises serious ethical concerns. Biases embedded in historical data or algorithm design may reinforce existing disparities, making it essential to explore the theoretical foundations and real-world implications of AI-based credit scoring. This paper examines these emerging opportunities and challenges within the context of the United States financial system.

Keywords

Artificial intelligenceCredit scoringFinancial inclusionMachine learningAlternative dataEthical concerns
View Full Article

Article Information

Received

8 September 2025

Accepted

15 October 2025

Published

25 October 2025

ISSN

3067-5804

E-ISSN

3067-5812

Article Type

Research Article

Open Access

Yes – Open Access