Risk Profiles of Financial Service Portfolio for Women Segment Using Machine Learning Algorithms

Typically, women are scored with a lower financial risk than men. However, the understanding of variables and indicators that lead to such results, are not fully understood. Furthermore, the stochastic nature of the data makes it difficult to generate a suitable profile to offer an adequate financial portfolio to the women segment. As the amount, variety, and speed of data increases, so too does the uncertainty inherent within, leading to a lack of confidence in the results. In this research, machine learning techniques are used for data analysis. In this way, faster, more accurate results are obtained than in traditional models (such as statistical models or linear programming) in addition to their scalability.

[1]  Sri Ramakrishna,et al.  FEATURE SELECTION METHODS AND ALGORITHMS , 2011 .

[2]  C. Brindley Barriers to women achieving their entrepreneurial potential: Women and risk , 2005 .

[3]  Tatjana D. Kolemisevska-Gugulovska,et al.  A fuzzy rate-of-return based model for portfolio selection and risk estimation , 2010, 2010 IEEE International Conference on Systems, Man and Cybernetics.

[4]  Nema Dean,et al.  A Survey of Popular R Packages for Cluster Analysis , 2016 .

[5]  L. Thomas A survey of credit and behavioural scoring: forecasting financial risk of lending to consumers , 2000 .

[6]  L. Ladha,et al.  FEATURE SELECTION METHODS AND ALGORITHMS , 2011 .

[7]  Samina Khalid,et al.  A survey of feature selection and feature extraction techniques in machine learning , 2014, 2014 Science and Information Conference.

[8]  Bassem Jarboui,et al.  A fuzzy logic control using a differential evolution algorithm aimed at modelling the financial market dynamics , 2011, Inf. Sci..

[9]  Nan-Chen Hsieh,et al.  An integrated data mining and behavioral scoring model for analyzing bank customers , 2004, Expert Syst. Appl..

[10]  Wuyi Yue,et al.  Support vector machine based multiagent ensemble learning for credit risk evaluation , 2010, Expert Syst. Appl..

[11]  Paulius Danenas,et al.  Selection of Support Vector Machines based classifiers for credit risk domain , 2015, Expert Syst. Appl..

[12]  Rukmani Mallepu Economic Empowerment of Women , 2012 .

[13]  Kate Rybczynski Gender Differences in Portfolio Risk Across Birth Cohort and Marital Status , 2015 .

[14]  G. Charness,et al.  Strong Evidence for Gender Differences in Risk Taking , 2012 .

[15]  Bin Sheng,et al.  Data Mining in census data with CART , 2010, 2010 3rd International Conference on Advanced Computer Theory and Engineering(ICACTE).

[16]  Yan Li,et al.  An AI based approach to multiple census data analysis for feature selection , 2016, J. Intell. Fuzzy Syst..

[17]  Gaël Varoquaux,et al.  Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..

[18]  Kin Keung Lai,et al.  Credit risk assessment with a multistage neural network ensemble learning approach , 2008, Expert Syst. Appl..

[19]  Graziella Bertocchi,et al.  Portfolio choices, gender and marital status , 2008 .

[20]  Jenny Säve-Söderbergh Self‐Directed Pensions: Gender, Risk, and Portfolio Choices , 2012 .

[21]  B. J. Sowmya,et al.  Data analytics to predict the income and economic hierarchy on Census data , 2016, 2016 International Conference on Computation System and Information Technology for Sustainable Solutions (CSITSS).

[22]  J. A. Ruiz-Vanoye,et al.  Analysis of risk in linear multi-objective model and its evaluation for selection of a portfolio of investment in the Mexican stock exchange , 2011 .