Credit Risk prediction is a critical task of any Financial Industry like Banks. Discovering dodger before giving loan is a momentous and conflict-ridden task of the Banker. Classification techniques can be used to find the claimant, whether he/she is a cheat or an unpretentious customer. Determining the outstanding classifier is a precarious assignment for any industrialist like a banker. It leads to drill down efficient research works through evaluating different classifiers and finding out the best classifier for the credit risk approximation. This research work investigates the efficiency of Partial Decision Tree Classifier and Logistic Classifier for the credit risk prediction and compares their competence through various measures. To predict the classifier performance, German credit dataset has been taken, and open source machine learning tool is used.
%0 Journal Article
%1 noauthororeditor
%A "Lakshmi Devasena, C"
%D 2014
%J Operations Research and Applications: An International Journal (ORAJ)
%K Confusion Error Matrix Mean Root Square
%N 1
%P 31-35
%R 10.5121/oraj.2014.1105
%T COMPETENCY COMPARISON BETWEEN LOGISTIC CLASSIFIER AND PARTIAL DECISION TREE CLASSIFIER FOR CREDIT RISK PREDICTION
%U http://airccse.com/oraj/papers/1114oraj05.pdf
%V 1
%X Credit Risk prediction is a critical task of any Financial Industry like Banks. Discovering dodger before giving loan is a momentous and conflict-ridden task of the Banker. Classification techniques can be used to find the claimant, whether he/she is a cheat or an unpretentious customer. Determining the outstanding classifier is a precarious assignment for any industrialist like a banker. It leads to drill down efficient research works through evaluating different classifiers and finding out the best classifier for the credit risk approximation. This research work investigates the efficiency of Partial Decision Tree Classifier and Logistic Classifier for the credit risk prediction and compares their competence through various measures. To predict the classifier performance, German credit dataset has been taken, and open source machine learning tool is used.
@article{noauthororeditor,
abstract = {Credit Risk prediction is a critical task of any Financial Industry like Banks. Discovering dodger before giving loan is a momentous and conflict-ridden task of the Banker. Classification techniques can be used to find the claimant, whether he/she is a cheat or an unpretentious customer. Determining the outstanding classifier is a precarious assignment for any industrialist like a banker. It leads to drill down efficient research works through evaluating different classifiers and finding out the best classifier for the credit risk approximation. This research work investigates the efficiency of Partial Decision Tree Classifier and Logistic Classifier for the credit risk prediction and compares their competence through various measures. To predict the classifier performance, German credit dataset has been taken, and open source machine learning tool is used. },
added-at = {2018-07-27T08:23:14.000+0200},
author = {"Lakshmi Devasena, C"},
biburl = {https://www.bibsonomy.org/bibtex/286e12149c07b7168f7f06ded4c04e5e5/oraj},
doi = {10.5121/oraj.2014.1105},
interhash = {06c6bb32d884f543ff837e9e2d546e1a},
intrahash = {86e12149c07b7168f7f06ded4c04e5e5},
journal = {Operations Research and Applications: An International Journal (ORAJ)},
keywords = {Confusion Error Matrix Mean Root Square},
month = {August},
number = 1,
pages = {31-35},
timestamp = {2018-07-27T08:23:14.000+0200},
title = {COMPETENCY COMPARISON BETWEEN LOGISTIC CLASSIFIER AND PARTIAL DECISION TREE CLASSIFIER FOR CREDIT RISK PREDICTION},
url = {http://airccse.com/oraj/papers/1114oraj05.pdf},
volume = 1,
year = 2014
}