Affiliation:
1. Late. G. N. Sapkal College of Engineering, Nashik, Maharashtra, India
Abstract
In today's digital age, financial institutions are facing a significant challenge in managing the increasing volume of loan applications. Traditional loan approval methods, which involve manual evaluation by credit analysts, are time-consuming and prone to errors. To overcome these challenges, machine learning algorithms have emerged as a promising solution for automating the loan approval process. This abstract discusses the use of machine learning algorithms for loan approval prediction. The proposed approach involves collecting and preprocessing a large dataset containing historical loan applications, including various financial and personal attributes. The data is then fed into a machine learning model that predicts the likelihood of loan approval based on the input features. The model is trained using supervised learning techniques such as Random Forest, Logistic Regression, Support Vector Machine, XGboost, Decision Tree, Python. The selected model is then integrated into the lending institution's loan approval process, replacing or augmenting the manual evaluation process. The benefits of this approach include faster processing times, reduced errors, and more consistent decision-making. Additionally, machine learning algorithms can provide insights into the factors that influence loan approval decisions, enabling lending institutions to make more informed decisions and improve their overall loan portfolio management strategies. Machine learning algorithms have the potential to revolutionize the loan approval process by providing a more efficient and accurate alternative to traditional methods. As the volume of loan applications continues to grow, it is essential for lending institutions to adopt these technologies to remain competitive and provide better service to their customers
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