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IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
__________________________________________________________________________________________
Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 29
IMPROVING THE CREDIT SCORING MODEL OF MICROFINANCE
INSTITUTIONS BY SUPPORT VECTOR MACHINE
Asuri Venkata Madhavi1
, Radhamani .G2
1
Research Scholar, Bharatiyar University, Tamil Nadu, India
2
Director –Professor & Director, Department Of Computer Science, Dr.G.R Damodaran College Of Science,
Coimbatore, TamilNadu, India.
Abstract
Credit risk is the most challenging risk to which all the financial institutions are exposed. Credit scoring is the main analytical
technique for credit risk assessment of all financial institutions. Microfinance Institutions - one of the financial institutions who would
lend money to financially weaker section people are prone to the credit risk due to their nature of service and need proactive credit
risk management techniques for their long-term sustainability. Most of the Microfinance Institutions follow traditional statistical
techniques for their Credit scoring. The Credit Scoring with data mining techniques in the microfinance industry is relatively a recent
application. This paper explores Credit scoring of Microfinance institutions with a novel non-parametric technique called Support
Vector Machine. In the proposed model datasets of a Microfinance Institution in Bangalore are compared with other traditional
proposed models . The results show that Support vector machines show a higher accuracy rate of classification.
Keywords —Classification, Credit scoring, Microfinance Institutions, Support vector machine (SVM).
----------------------------------------------------------------------***--------------------------------------------------------------------
1. INTRODUCTION
Risk is an integral part of financial services. Managing risk is
a complex task for any financial organization, and increasingly
important in a world where economic events and financial
systems are linked. Global financial institutions and banking
regulators have emphasized risk management as an essential
element of long-term success [1]. When financial institutions
issue loans, there is always a risk that the borrower will repay
back the amount or the loan could be a delinquent loan
.Delinquent borrowers are mentioned as “Default Borrowers”.
Financial Institutions always have a threat of – Default
Borrowers. Financial institutions take measurements either to
avoid this risk or ignore the risk .
Microfinance Institutions (MFIs) , whose main objective is to
lend loans to the financially weaker communities also face
credit risks that they must manage efficiently and effectively
to be successful. If the MFI does not manage its credit risks
well, it will likely fail to meet its social and financial
objectives. When poorly managed risks begin to result in
financial losses, the stake holders tend to lose confidence in
the organization and funds begin to dry up. When funds dry
up, the social objective of MFI to serve the poor quickly goes
out of business.
To overcome this, MFI’s need to have a check on their
Customers. One of the Credit Risk management techniques to
find the Default Customers is “Credit Scoring”. Credit
Scoring is a technique to determine if a customer is likely to
default on the financial obligation.
Specifically, credit scoring problem can be described as
follows :
Let’s consider a Dataset of Customers
𝐗 = 𝐚𝐧, 𝐛𝐧 , … 𝐚𝐧, 𝐛𝐧 , … . 𝐚𝐧, 𝐛𝐧 -(1)
Let’s consider each customer aj which contains c attributes say
(𝐚𝐣𝟏, 𝐚𝐣𝟐, 𝐚𝐣𝟑, 𝐚𝐣𝟒, … . 𝐚𝐣𝐜) then bj denotes the type of
customer ,for example Good or Bad. The objective of Credit
Scoring problem is to construct a model f , for the new
customer a such that the model can predict the type of the
customer as mentioned in the equation (2).
𝐛 = 𝒇(𝐚) - (2)
To evaluate the credit risk and to develop Credit Scoring
model as stated above most of the financial organizations use
both quantitative and qualitative techniques. Techniques most
commonly employed by Financial Institutions and specifically
in Microfinance Institutions are discussed in the Literature
Review.
The structure of the paper is as follows. Section 2 is the
Literature review. The Research methodology is presented in
Section 3 and Section 4 draws conclusion .
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
__________________________________________________________________________________________
Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 30
2. LITERATURE REVIEW
In general , the classification technique to analyse credit risk is
applied on the dataset of the previous customers available at
the financial institutions to distinguish them as good or
delinquent customers, to find if there exists a relationship
between the characteristics and reasons for delinquency of
loans and accordingly choose an accurate classifier to
implement on the new applicants . There has been a good
literature survey over years that has shown that there have
been different statistical and datamining classification
techniques like Logistic Regression, Linear Discriminant
Analysis ,Naïve Bayes Classifier, Decision Trees ,Neural
Networks implemented by different financial institutions to
discriminate customers as good or delinquent customers.
In comparison to the credit scoring models implemented by
different financial institutions, the development of credit
scoring models specific to Microfinance sector is very minor .
Furthermore , the models which are in existence in large are
based on traditional parametric statistical techniques except
one or two models based on non-parametric techniques like
Multi Layer Perceptron approach(MLP) [6] and Hybridized
Models [8].
Among the traditional methods used by Microfinance
Institutions ,one of the method used by them to assess their
credit risk is CHAID (Chi-squared Automatic Interaction
Detection) .CHAID is a tree-structured classification method
(Kass, 1980). It belongs to a family of segmentation methods
known as Automatic Interaction Detection (AID) .As its name
suggests, the AID allows the detection of interactions between
variables. Thus, the segmentation is based on the interactions.
The chi-Square method is used in Microfinance Institutions to
assess the effectiveness of credit management systems like
Credit terms ,Client Appraisal, Credit risk control measures
and credit collection policies on Loan Performance of
Microfinance Institutions .This method builds “Non-Binary
Trees “ based on a simple algorithm and divides the customers
of microfinance in to groups (nodes ) of equal category and try
to assess the Credit risk [2].
Apart from the traditional methods ,comparison of different
datamining methods like i)Decision trees ii)Clustering
iii)Naïve Bayers Classifier iv) FReBE exemplar, applied on
loan data of sub-prime lenders of microfinance institutions
have been studied and among all the methods Decision trees
appeared to be the most appropriate datamining technology [4]
A Peruvian Microfinance Institute applied Neural Networks
,one of the most promising non –parametric credit scoring
model based on Multilayer perceptron approach (MLP) on
almost 5,500 borrowers and benchmarked its performance
against other models like the traditional Linear Discriminant
Analysis (LDA) ,Quadratic Discriminant Analysis (QDA) ,and
Logistic Regression Techniques (LR) . The results revealed
that Neural Network Model outperformed the other three
classical techniques [6]. However,Neural networks have
problem of overfitting and opaqueness.
Along with the above stated techniques ,some combined
classifiers which integrate two or more classification methods
have shown higher accuracy of predictability than individual
methods . One such method using a hybridized and ensemble
approach, based on the Particle Swarm Optimization (PSO)
and Estimation of Distribution Algorithms (EDA) is used by
Mexican Microfinance Institution .This ensemble method
provided an ease in interpretation of the default customers for
the credit officer. The disadvantage of the model is it shows a
low reliability [8].
3. RESEARCH METHODOLOGY
This section proposes model of Credit Scoring based on
Support Vector Machine. Compares the sample datasets of a
Micro financial Institution in Bangalore with traditional
models and Support Vector Machine . The Test results show
that Support Vector Machines outperforms other methods.
Support vector machine (SVM) Proposed by Vapnik ,is one of
the powerful data classification and function estimation tool.
This is a method where the input vectors are mapped to a
higher dimensional feature space and an optimal separating
hyperplane in this space is constructed .The vectors (cases)
that define the hyperplane are called the support vectors .
SVMs can also efficiently perform a non-linear classification
using what is called the kernel trick, implicitly mapping their
inputs into high-dimensional feature spaces.
The basic idea of SVM is that the original input vector is
mapped into a high or infinite dimensional feature space by a
nonlinear mapping function f based on Mercer Theory.
The learning process of SVM is to solve quadratic or linear
programming and its solution is optimum. SVM has been
successfully applied to number of applications like biometrics,
text categorization, face and fingerprint recognition etc.
To understand SVM better let’s consider a training sample:
X=[(𝒂𝒏, 𝒃𝒏), … (𝒂𝒏, 𝒃𝒏), … . (𝒂𝒏, 𝒃𝒏)] from equation – (1)
Let’s consider : { 𝒂𝒌, 𝒃𝒌 } , 𝒌 = 𝟏 … 𝑵 where ak belongs to
R d
, in the kth
input pattern, d denotes the dimension of the
input space and bk is its corresponding observed result, which
is a binary variable 1 or -1.
Applying the above equation to credit scoring models, ak
denotes the attributes of applicants or creditors. bk is the
observed result of whether the debt is repaid timely or whether
his or her application is approved. If the customer application
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
__________________________________________________________________________________________
Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 31
is rejected or if customer default’s the debt after being
approved, then bk=1 ,
else bk= -1.
That is to say that, a rule to separate the point in R d
plane into
two parts is generated with
bk= {1,-1} . The separation of groups (customers into default
and non-default groups) is defined as classes. For linear
separable samples of two classes, a separating hyperplane is
found which maximizes the margin between itself and the
nearest training points
To explain it more clearly ,lets consider that for the given
normal direction w, there exist two extreme lines L1, L2 and all
the lines between and paralleling with them can separate two
classes exactly. SVM algorithm selects Maximum margin
method to separate the two classes. Maximum margin method
is to choose the line which creates maximum margin between
the two lines, i.e. the distance between the stated two lines
L1,L2. For normalized sample, the equation of L1, L2 and the
distance between the two lines is given as :
𝑳𝟏 = { 𝒘𝒕 𝒇(𝒂𝒌) + 𝒚 ≥ 𝟏 𝒊𝒇 𝒃𝒌 = 𝟏 }
(or)
𝑳𝟐 = 𝒘𝒕 𝒇 𝒂𝒌 + 𝒚 ≤ −𝟏 𝒊𝒇 𝒃𝒌 = 𝟏 - (3)
The distance or margin between the two boundary lines L1 and
L2 is = 𝟐/║ 𝒘 ║ - - (4)
This is because the larger the distance the generalization
would be affective.
Further let us assume w*, y* be the solution of equation (3),
then (w* . a) + y* = 0 is considered to be the line in the middle
of L1, L2, called optimality hyperplane , and the decision
function
f(x) = sign((w* .a) + y*) would determine which side of the
class the customers would fall(either towards Class A or Class
B).
In some cases, when the training set is not linear separable,
slack variables ξi≥ 0 is introduced to the ith
training point
(ai,bi), and the constraint fi((w _ ai) + b)≥ 1 relax to fi((w _ ai))
+ ξi≥1. The objective of this is to maximize the margin and
minimize the classification error ∑i=1
n
ξi.. Then the QP problem
is as follows:
min 1/2 ║w║2
w;b ± C ∑i=1
n
ξi - (5)
where C > 0 is penalty parameter. The form of optimal
hyperplane decision function is the same as the linearly
separable case. For nonlinear classification problem, SVM
maps the training samples into a high-dimensional feature
space via a kernel function. Once a kernel function K(xi,xj) is
selected, the hyperplane is determined by
n n i
min 1/2∑ ∑ yiyjαiαj K(xi,xj) - ∑ α j - (6)
α i=1 j=1 j=1
To obtain better results, it is very important to set related
parameter such as selection of kernels. The most often used
kernels are linear, polynomial, radial basis function (RBF),
sigmoid functions. The parameters that should be optimized
are penalty parameter C and α. Thus proper parameter setting
can improve SVM classification accuracy.
Hence applying the above equations the algorithm of our
credit scoring model for Microfinance Institutions using SVM
can be described as follows:
Step 1: Start
Step 2: Collect the Data from the Field Officers of
Microfinance Institutions.
Step 3: Indentify the details.
Step 4: Distinguish the applicant’s details such as credit
history, account balances, loan purpose, loan amount,
employment status, personal information, age, housing, job etc
as classification attributes.
Step 5: Use SVM to obtain the variables of importance.
Step 6: If variables of importance are listed accept them
else
Step 7: Drop features with zero variable importance.
Step8: Rebuild data set and randomly partition into a training
set and a testing set.
Step 9: Choose one of the kernel functions like Radial Basis
Function (RBF) Kernel Function to optimize the parameters.
Step 10: Choose penalty parameter (C) that leads to the lowest
error rate .
Step 11: SVM then classifies the applicants to default and non-
default classes.
Step 12: Stop
3.1 Processing of Data Sample.
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
__________________________________________________________________________________________
Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 32
To determine the performance of SVM over other datamining
techniques a small sample dataset from a Microfinance
Institution in Bangalore has been taken and analysed. The
sample data consists of 157 instances. It consists of customer
information like i)Personal Characteristics of borrowers
(marital status, sex etc) ii) whether the loan is a group loan or
individual loan. iii) Economic and Financial ratios of the
Microfinance Institution. iv)Characteristics of current financial
operation(type of interest, amount, delays in the payment )etc.
24 features of the above type are mentioned of which 16
features are selected. To perform an appropriate comparison of
classification models the data is split into two subsets a) A
training set of ( 56 instances) and b) A test sample of (101
instances) and tested on Matlab software. To check SVM
,Radial basis Kernel(RBF) is selected. The Percentage of
Accurately classified data of default and non-default cases and
Inaccurately classified data are monitored on five techniques
like Logistic Regression(LR),Quadratric discriminant
Analysis(QDA), Linear Discriminant Analysis(LDA) ,Back
Propogation neural network (BP) method and Support Vector
machine . The results are placed in Table-1.
Table- 1 empirical results on dataset
Model Train sample Set (56 ) Test Sample Set (101)
Accurate Inaccurate Accurate Inaccurate
LR 77.23% 22.77% 73.15% 26.85%
QDA 71.24% 28.76% 71.50% 28.50%
LDA 77.54% 22.46% 73.45% 26.55%
BP 82.25% 17. 75% 79.2% 20.8%
SVM 87.54% 12.46% 83.17% 16.83%
4. CONCLUSIONS
The empirical results of Table-1 clearly shows that SVM gives
an higher accuracy rate both in test sample and trained sample
which indicates clearly that SVM is a better classification
technique then other traditional techniques and also to the non-
parametric Back Propagation neural network technique.
This method would be best suitable for the Microfinance
institutions who would deal with customers from
economically weaker sections. The sustainability of the
Institution depends on how they accurately differentiate the
customer who would pay or not and in this regard SVM would
be an appropriate method and would help to have a
competitive advantage to the Microfinance Industry over other
Commercial Banks.
REFERENCES
[1]. Bald, Joachim. January 2000.” A Risk Management
Framework For Microfinance Institutions “,Deutsche
Gesellschaft für Technische Zusammenarbeit (GTZ)
GmbH. Postfach 5180, 65726 Eschborn, Germany. Internet:
http://www.gtz.de.
[2]. G.D.Gyamfi,“Assessing The Effectiveness Of Credit Risk
Management Techniques Of MicroFinance Firms in
ACCRA”, Journal Of Science and technology ,Vol.32,pp.96-
103,2012.
[3]. Haron.O.Moti,Justo simiyu Masinde,Nebat Galo Mugenda
,Mary Nelima Sindani,“Effectiveness Of Credit Management
System on Loan Performance: Empirical Evidence From
Microfinance sector in Kenya”, International Journal Of
Business ,Humanities and technology , Vol.2,No 6 ,October -
2012.
[4]. Jia Wu,Sunil Vadera,Karl Dayson,Diane Burridge,Ian
Clough “A Comparision of Datamining Methods in
Microfinance.”, IEEE Conferences,2010.
[5]. Jozef zurada,K.Niki Kunene ,“Comparisons of the
performance of Computational Intelligence Methods for Loan
Granting decisions” IEEE conferences ,2011.
[6]. Antonio Blanco,Rafael Pino-Mejias,Juan Lara,Salvador
Rayo, “Credit Scoring models for MFI using Neural Networks
: Evidence from Peru”,Expert Systems with
applications,Vol.40 ,pp 356-364, 2013.
[7]. Xiang Hui,Yang Sheng Gang ,“Credit Scoring model
based On Selective Neural network Enesemble”,IEEE
conference papers.
[8]. Arturo Elias,Alejandro Padilla,Felipe Padilla , “Credit
Scoring for Microfinance Institutions in Mexico an ensemble
and Hybridized approach”, International Conference on
Technology and Management ,Vol .21, 2012.
[9]. Defu Zhang,Hongyi Huang,qingshan chen,Yi Jiang, “A
Comparison Study Of Credit Scoring Models”, IEEE
conference – 2007.
[10]. V. Vapnik, The Nature of Statistical Learning Theory.
New York:Springer, 1995.
[11]. Yongqiao Wang,Shouyang Wang and K.K.Lai,” A new
Fuzzy Support Vector machine To Evaluate credit Risk”,
IEEE Transactions on Fuzzy Systems, Vol 13 No 6,2005.
[12]. Wei Xu,Shenghu Zhou,Donmei Duan,Yanhui Chen,” A
Support Vector machine Based Method For Credit Risk
Assessment”,IEEE International Conference on E-Business
Engineering.
[13]. Cheng-Lung Huang a, Mu-Chen Chen b, Chieh-Jen
Wang, ” Credit scoring with a data mining approach based on
support vector machines”, Expert Systems with Applications
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[14]. Rashmi Malhotra,D.K Malhotra, “Differentiating
Between Good Credits and Bad Credits sing Neuro –Fuzzy
Systems ”,European Journal of Operations Research ,136 ,pp
190-211.
[15]. Zan Huanga,, Hsinchun Chena, Chia-Jung Hsua, Wun-
Hwa Chenb, Soushan Wu,” Credit rating analysis with support
vector machines and neuralnetworks: a market comparative
study”, Decision Support Systems 37 , pp-543– 558
IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308
__________________________________________________________________________________________
Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 33
[16]. Tian –Shyug Lee,Chih-Chou Chiu,Yu-Chao Chou,Chi-
Jie Lu, “Mining the customer credit using classification and
regression tree and multivariate adaptive regression
splines”,Computational Statistics and data Analysis ,50,pp-
1113-1130.
[17]. David Martens,Bart Baesens,Tony Van Gestel,Jan
Vanthienen,“Comprehensible credit scoring models using rule
extraction from support vector machines”,European Journal
Of Operations Research 183, pp 1466-1476.
[18]. Ligang Zhou, Kin Keung Lai,”Multi-Agent Ensemble
Models Based on Weighted Least Square SVM for Credit Risk
Assessment”,IEEE conference papers .
[19]. Eliana angelini,Giacomo di Tollo,Andrea Roli,“A neural
network approach for Credit Risk Evaluation.” ,The Quaterly
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[20]. Adel Lahsasna, Raja Noor Ainon, and Teh Ying Wah,”
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[22]. Weimin Chen *, Chaoqun Ma, Lin Ma,” Mining the
customer credit using hybrid support vector machine
technique”, Expert Systems with Applications 36 , 7611–7616.

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Improving the credit scoring model of microfinance

  • 1. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 __________________________________________________________________________________________ Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 29 IMPROVING THE CREDIT SCORING MODEL OF MICROFINANCE INSTITUTIONS BY SUPPORT VECTOR MACHINE Asuri Venkata Madhavi1 , Radhamani .G2 1 Research Scholar, Bharatiyar University, Tamil Nadu, India 2 Director –Professor & Director, Department Of Computer Science, Dr.G.R Damodaran College Of Science, Coimbatore, TamilNadu, India. Abstract Credit risk is the most challenging risk to which all the financial institutions are exposed. Credit scoring is the main analytical technique for credit risk assessment of all financial institutions. Microfinance Institutions - one of the financial institutions who would lend money to financially weaker section people are prone to the credit risk due to their nature of service and need proactive credit risk management techniques for their long-term sustainability. Most of the Microfinance Institutions follow traditional statistical techniques for their Credit scoring. The Credit Scoring with data mining techniques in the microfinance industry is relatively a recent application. This paper explores Credit scoring of Microfinance institutions with a novel non-parametric technique called Support Vector Machine. In the proposed model datasets of a Microfinance Institution in Bangalore are compared with other traditional proposed models . The results show that Support vector machines show a higher accuracy rate of classification. Keywords —Classification, Credit scoring, Microfinance Institutions, Support vector machine (SVM). ----------------------------------------------------------------------***-------------------------------------------------------------------- 1. INTRODUCTION Risk is an integral part of financial services. Managing risk is a complex task for any financial organization, and increasingly important in a world where economic events and financial systems are linked. Global financial institutions and banking regulators have emphasized risk management as an essential element of long-term success [1]. When financial institutions issue loans, there is always a risk that the borrower will repay back the amount or the loan could be a delinquent loan .Delinquent borrowers are mentioned as “Default Borrowers”. Financial Institutions always have a threat of – Default Borrowers. Financial institutions take measurements either to avoid this risk or ignore the risk . Microfinance Institutions (MFIs) , whose main objective is to lend loans to the financially weaker communities also face credit risks that they must manage efficiently and effectively to be successful. If the MFI does not manage its credit risks well, it will likely fail to meet its social and financial objectives. When poorly managed risks begin to result in financial losses, the stake holders tend to lose confidence in the organization and funds begin to dry up. When funds dry up, the social objective of MFI to serve the poor quickly goes out of business. To overcome this, MFI’s need to have a check on their Customers. One of the Credit Risk management techniques to find the Default Customers is “Credit Scoring”. Credit Scoring is a technique to determine if a customer is likely to default on the financial obligation. Specifically, credit scoring problem can be described as follows : Let’s consider a Dataset of Customers 𝐗 = 𝐚𝐧, 𝐛𝐧 , … 𝐚𝐧, 𝐛𝐧 , … . 𝐚𝐧, 𝐛𝐧 -(1) Let’s consider each customer aj which contains c attributes say (𝐚𝐣𝟏, 𝐚𝐣𝟐, 𝐚𝐣𝟑, 𝐚𝐣𝟒, … . 𝐚𝐣𝐜) then bj denotes the type of customer ,for example Good or Bad. The objective of Credit Scoring problem is to construct a model f , for the new customer a such that the model can predict the type of the customer as mentioned in the equation (2). 𝐛 = 𝒇(𝐚) - (2) To evaluate the credit risk and to develop Credit Scoring model as stated above most of the financial organizations use both quantitative and qualitative techniques. Techniques most commonly employed by Financial Institutions and specifically in Microfinance Institutions are discussed in the Literature Review. The structure of the paper is as follows. Section 2 is the Literature review. The Research methodology is presented in Section 3 and Section 4 draws conclusion .
  • 2. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 __________________________________________________________________________________________ Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 30 2. LITERATURE REVIEW In general , the classification technique to analyse credit risk is applied on the dataset of the previous customers available at the financial institutions to distinguish them as good or delinquent customers, to find if there exists a relationship between the characteristics and reasons for delinquency of loans and accordingly choose an accurate classifier to implement on the new applicants . There has been a good literature survey over years that has shown that there have been different statistical and datamining classification techniques like Logistic Regression, Linear Discriminant Analysis ,Naïve Bayes Classifier, Decision Trees ,Neural Networks implemented by different financial institutions to discriminate customers as good or delinquent customers. In comparison to the credit scoring models implemented by different financial institutions, the development of credit scoring models specific to Microfinance sector is very minor . Furthermore , the models which are in existence in large are based on traditional parametric statistical techniques except one or two models based on non-parametric techniques like Multi Layer Perceptron approach(MLP) [6] and Hybridized Models [8]. Among the traditional methods used by Microfinance Institutions ,one of the method used by them to assess their credit risk is CHAID (Chi-squared Automatic Interaction Detection) .CHAID is a tree-structured classification method (Kass, 1980). It belongs to a family of segmentation methods known as Automatic Interaction Detection (AID) .As its name suggests, the AID allows the detection of interactions between variables. Thus, the segmentation is based on the interactions. The chi-Square method is used in Microfinance Institutions to assess the effectiveness of credit management systems like Credit terms ,Client Appraisal, Credit risk control measures and credit collection policies on Loan Performance of Microfinance Institutions .This method builds “Non-Binary Trees “ based on a simple algorithm and divides the customers of microfinance in to groups (nodes ) of equal category and try to assess the Credit risk [2]. Apart from the traditional methods ,comparison of different datamining methods like i)Decision trees ii)Clustering iii)Naïve Bayers Classifier iv) FReBE exemplar, applied on loan data of sub-prime lenders of microfinance institutions have been studied and among all the methods Decision trees appeared to be the most appropriate datamining technology [4] A Peruvian Microfinance Institute applied Neural Networks ,one of the most promising non –parametric credit scoring model based on Multilayer perceptron approach (MLP) on almost 5,500 borrowers and benchmarked its performance against other models like the traditional Linear Discriminant Analysis (LDA) ,Quadratic Discriminant Analysis (QDA) ,and Logistic Regression Techniques (LR) . The results revealed that Neural Network Model outperformed the other three classical techniques [6]. However,Neural networks have problem of overfitting and opaqueness. Along with the above stated techniques ,some combined classifiers which integrate two or more classification methods have shown higher accuracy of predictability than individual methods . One such method using a hybridized and ensemble approach, based on the Particle Swarm Optimization (PSO) and Estimation of Distribution Algorithms (EDA) is used by Mexican Microfinance Institution .This ensemble method provided an ease in interpretation of the default customers for the credit officer. The disadvantage of the model is it shows a low reliability [8]. 3. RESEARCH METHODOLOGY This section proposes model of Credit Scoring based on Support Vector Machine. Compares the sample datasets of a Micro financial Institution in Bangalore with traditional models and Support Vector Machine . The Test results show that Support Vector Machines outperforms other methods. Support vector machine (SVM) Proposed by Vapnik ,is one of the powerful data classification and function estimation tool. This is a method where the input vectors are mapped to a higher dimensional feature space and an optimal separating hyperplane in this space is constructed .The vectors (cases) that define the hyperplane are called the support vectors . SVMs can also efficiently perform a non-linear classification using what is called the kernel trick, implicitly mapping their inputs into high-dimensional feature spaces. The basic idea of SVM is that the original input vector is mapped into a high or infinite dimensional feature space by a nonlinear mapping function f based on Mercer Theory. The learning process of SVM is to solve quadratic or linear programming and its solution is optimum. SVM has been successfully applied to number of applications like biometrics, text categorization, face and fingerprint recognition etc. To understand SVM better let’s consider a training sample: X=[(𝒂𝒏, 𝒃𝒏), … (𝒂𝒏, 𝒃𝒏), … . (𝒂𝒏, 𝒃𝒏)] from equation – (1) Let’s consider : { 𝒂𝒌, 𝒃𝒌 } , 𝒌 = 𝟏 … 𝑵 where ak belongs to R d , in the kth input pattern, d denotes the dimension of the input space and bk is its corresponding observed result, which is a binary variable 1 or -1. Applying the above equation to credit scoring models, ak denotes the attributes of applicants or creditors. bk is the observed result of whether the debt is repaid timely or whether his or her application is approved. If the customer application
  • 3. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 __________________________________________________________________________________________ Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 31 is rejected or if customer default’s the debt after being approved, then bk=1 , else bk= -1. That is to say that, a rule to separate the point in R d plane into two parts is generated with bk= {1,-1} . The separation of groups (customers into default and non-default groups) is defined as classes. For linear separable samples of two classes, a separating hyperplane is found which maximizes the margin between itself and the nearest training points To explain it more clearly ,lets consider that for the given normal direction w, there exist two extreme lines L1, L2 and all the lines between and paralleling with them can separate two classes exactly. SVM algorithm selects Maximum margin method to separate the two classes. Maximum margin method is to choose the line which creates maximum margin between the two lines, i.e. the distance between the stated two lines L1,L2. For normalized sample, the equation of L1, L2 and the distance between the two lines is given as : 𝑳𝟏 = { 𝒘𝒕 𝒇(𝒂𝒌) + 𝒚 ≥ 𝟏 𝒊𝒇 𝒃𝒌 = 𝟏 } (or) 𝑳𝟐 = 𝒘𝒕 𝒇 𝒂𝒌 + 𝒚 ≤ −𝟏 𝒊𝒇 𝒃𝒌 = 𝟏 - (3) The distance or margin between the two boundary lines L1 and L2 is = 𝟐/║ 𝒘 ║ - - (4) This is because the larger the distance the generalization would be affective. Further let us assume w*, y* be the solution of equation (3), then (w* . a) + y* = 0 is considered to be the line in the middle of L1, L2, called optimality hyperplane , and the decision function f(x) = sign((w* .a) + y*) would determine which side of the class the customers would fall(either towards Class A or Class B). In some cases, when the training set is not linear separable, slack variables ξi≥ 0 is introduced to the ith training point (ai,bi), and the constraint fi((w _ ai) + b)≥ 1 relax to fi((w _ ai)) + ξi≥1. The objective of this is to maximize the margin and minimize the classification error ∑i=1 n ξi.. Then the QP problem is as follows: min 1/2 ║w║2 w;b ± C ∑i=1 n ξi - (5) where C > 0 is penalty parameter. The form of optimal hyperplane decision function is the same as the linearly separable case. For nonlinear classification problem, SVM maps the training samples into a high-dimensional feature space via a kernel function. Once a kernel function K(xi,xj) is selected, the hyperplane is determined by n n i min 1/2∑ ∑ yiyjαiαj K(xi,xj) - ∑ α j - (6) α i=1 j=1 j=1 To obtain better results, it is very important to set related parameter such as selection of kernels. The most often used kernels are linear, polynomial, radial basis function (RBF), sigmoid functions. The parameters that should be optimized are penalty parameter C and α. Thus proper parameter setting can improve SVM classification accuracy. Hence applying the above equations the algorithm of our credit scoring model for Microfinance Institutions using SVM can be described as follows: Step 1: Start Step 2: Collect the Data from the Field Officers of Microfinance Institutions. Step 3: Indentify the details. Step 4: Distinguish the applicant’s details such as credit history, account balances, loan purpose, loan amount, employment status, personal information, age, housing, job etc as classification attributes. Step 5: Use SVM to obtain the variables of importance. Step 6: If variables of importance are listed accept them else Step 7: Drop features with zero variable importance. Step8: Rebuild data set and randomly partition into a training set and a testing set. Step 9: Choose one of the kernel functions like Radial Basis Function (RBF) Kernel Function to optimize the parameters. Step 10: Choose penalty parameter (C) that leads to the lowest error rate . Step 11: SVM then classifies the applicants to default and non- default classes. Step 12: Stop 3.1 Processing of Data Sample.
  • 4. IJRET: International Journal of Research in Engineering and Technology eISSN: 2319-1163 | pISSN: 2321-7308 __________________________________________________________________________________________ Volume: 03 Special Issue: 07 | May-2014, Available @ http://www.ijret.org 32 To determine the performance of SVM over other datamining techniques a small sample dataset from a Microfinance Institution in Bangalore has been taken and analysed. The sample data consists of 157 instances. It consists of customer information like i)Personal Characteristics of borrowers (marital status, sex etc) ii) whether the loan is a group loan or individual loan. iii) Economic and Financial ratios of the Microfinance Institution. iv)Characteristics of current financial operation(type of interest, amount, delays in the payment )etc. 24 features of the above type are mentioned of which 16 features are selected. To perform an appropriate comparison of classification models the data is split into two subsets a) A training set of ( 56 instances) and b) A test sample of (101 instances) and tested on Matlab software. To check SVM ,Radial basis Kernel(RBF) is selected. The Percentage of Accurately classified data of default and non-default cases and Inaccurately classified data are monitored on five techniques like Logistic Regression(LR),Quadratric discriminant Analysis(QDA), Linear Discriminant Analysis(LDA) ,Back Propogation neural network (BP) method and Support Vector machine . The results are placed in Table-1. Table- 1 empirical results on dataset Model Train sample Set (56 ) Test Sample Set (101) Accurate Inaccurate Accurate Inaccurate LR 77.23% 22.77% 73.15% 26.85% QDA 71.24% 28.76% 71.50% 28.50% LDA 77.54% 22.46% 73.45% 26.55% BP 82.25% 17. 75% 79.2% 20.8% SVM 87.54% 12.46% 83.17% 16.83% 4. CONCLUSIONS The empirical results of Table-1 clearly shows that SVM gives an higher accuracy rate both in test sample and trained sample which indicates clearly that SVM is a better classification technique then other traditional techniques and also to the non- parametric Back Propagation neural network technique. This method would be best suitable for the Microfinance institutions who would deal with customers from economically weaker sections. The sustainability of the Institution depends on how they accurately differentiate the customer who would pay or not and in this regard SVM would be an appropriate method and would help to have a competitive advantage to the Microfinance Industry over other Commercial Banks. REFERENCES [1]. Bald, Joachim. January 2000.” A Risk Management Framework For Microfinance Institutions “,Deutsche Gesellschaft für Technische Zusammenarbeit (GTZ) GmbH. Postfach 5180, 65726 Eschborn, Germany. Internet: http://www.gtz.de. [2]. 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