Loan Forecast

Project Code :TCMAPY981

Objective

The Learning objective of Loan Forecasting using machine learning is to predict a borrower's ability to repay a loan by analyzing historical data, borrower's information, and other relevant factors. This predictive insight Machine learnings lenders in making informed decisions, minimizing risk, and optimizing loan approval processes.

Abstract

Default appraisal or appraisal on a loan is a crucial process, and banks should help them assess whether the loan applicant is a defaulter at a later stage so that they can process the application and decide whether or not to approve the loan. The conclusion obtained from such estimates will help banks and other financial institutions to reduce their losses and ultimately increase the number of credits. Therefore, it is important to build a model that takes into account the different aspects of an applicant and results in relation to the relevant applicant. All available means to borrow money from their illegal activities are used for criminal activities in today’s technology-based realm. The growing number of bad debts as a result of commercial bank loans reflects the problem of troubled banks in the economy. We implementing data mining algorithms to assess defaulters from a dataset containing information about home loan applications, thereby helping banks make better decisions in the future.

 

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

H/W CONFIGURATION:

Processor: I3/Intel Processor

RAM : 8GB (min)

Hard Disk: 128 GB

Key Board: Standard Windows Keyboard

Mouse    : Two or Three Button Mouse

Monitor : Any

S/W CONFIGURATION:

Operating System: Windows 7+

Server-side Script: Python 3.6+

IDE                : Colab 

Libraries Used     : Pandas, Numpy, Scikitlearn, tensorflow, 


Demo Video

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