
Article History
Received: 31 July 2024
Accepted: 02 August 2024
Published: 31 August 2024
MEMBER:
Volume 2, Issue 1, 2nd Quarter 2024, pp. 61 – 69
Credit Assessment and Recommendation System (CARS) using Naive Bayesian Algorithm
Author:
Victorino Farrales, Jonnifer Mandigma, Casielyn Capistrano, Severino Bedis Jr., Aleta Fabregas
Abstract:
With the increasing demand for credit services to fuel economic growth, traditional credit assessment methods,
relying on outdated regulations and manual evaluations, hinder efficiency. The proposed Credit Assessment and
Recommendation System aims to revolutionize this process by using a Naïve Bayes Classifier to swiftly and
accurately determine credit eligibility. By analyzing customers' biographic, demographic, and historical data, the
system can predict approval outcomes and provide actionable recommendations. This approach promises to
streamline the credit application process, reduce risks associated with manual assessments, and achieve a
prediction accuracy of 90%.
Keywords: Bayesian Algorithm, Credit Assessment, Recommendation System, Loans, Assessment Efficiency
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Article History
Received: 31 July 2024
Accepted: 02 August 2024
Published: 31 August 2024
Volume 2, Issue 1, 2nd Quarter 2024, pp. 61 – 69
Credit Assessment and Recommendation System (CARS) using Naive Bayesian Algorithm
Author:
Victorino Farrales, Jonnifer Mandigma, Casielyn Capistrano, Severino Bedis Jr., Aleta Fabregas
Abstract:
With the increasing demand for credit services to fuel economic growth, traditional credit assessment methods,
relying on outdated regulations and manual evaluations, hinder efficiency. The proposed Credit Assessment and
Recommendation System aims to revolutionize this process by using a Naïve Bayes Classifier to swiftly and
accurately determine credit eligibility. By analyzing customers' biographic, demographic, and historical data, the
system can predict approval outcomes and provide actionable recommendations. This approach promises to
streamline the credit application process, reduce risks associated with manual assessments, and achieve a
prediction accuracy of 90%.
Keywords: Bayesian Algorithm, Credit Assessment, Recommendation System, Loans, Assessment Efficiency
Indexed:


Licensed by:

Submit Articles:
A. CURATED/INHOUSE JOURNALS
1. Journal Description
2. Select Journal
a. Declaration of Originality
b. Select the Journal
c. Paper Formatting
d. Initial Manuscript Submission
e. Peer Review Process
f. Manuscript Revision
g. Editing Services
h. Final Manuscript Submission
i. Acknowledgement to Publish
j. Copyright Matters
k. Inhouse Publication

Article History
Received: 31 July 2024
Accepted: 02 August 2024
Published: 31 August 2024
Volume 2, Issue 1, 2nd Quarter 2024, pp. 61 – 69
Credit Assessment and Recommendation System (CARS) using Naive Bayesian Algorithm
Author:
Victorino Farrales, Jonnifer Mandigma, Casielyn Capistrano, Severino Bedis Jr., Aleta Fabregas
Abstract:
With the increasing demand for credit services to fuel economic growth, traditional credit assessment methods,
relying on outdated regulations and manual evaluations, hinder efficiency. The proposed Credit Assessment and
Recommendation System aims to revolutionize this process by using a Naïve Bayes Classifier to swiftly and
accurately determine credit eligibility. By analyzing customers' biographic, demographic, and historical data, the
system can predict approval outcomes and provide actionable recommendations. This approach promises to
streamline the credit application process, reduce risks associated with manual assessments, and achieve a
prediction accuracy of 90%.
Keywords: Bayesian Algorithm, Credit Assessment, Recommendation System, Loans, Assessment Efficiency
Indexed:


Licensed by:


