dc.description.abstract | Because of the outstanding growth in information, future predicting
decisions about strategy development are extremely needed in each area.
As a result, machine learning techniques have been used widely in bank-
ing area.
The main purpose of this thesis is that we employ a series of machine
learning techniques to predict potential customers for future up-sell cam-
paign, using knowledge development of databases in the banking indus-
try. This thesis conducted in banking sector, it was aimed to reduce the
cost for marketing to a minimum via analysis of potential customers for
upgrading a product in the banks and estimate the expected pro t from
model.
Therefore, in order to select the best model, a comparison studies
required to present the most appropriate approach to be used. This
thesis presents a comparative method between three classi cation tech-
niques of machine learning: Logistic Regression, Decision Tree and Ran-
dom Forest. The evaluation is compared by Gain and Lift Chart and
Kolmogorov-Smirnov chart after applying the two classi ers on a data
set consisting of customer's personal, transaction and nancial informa-
tion in Asia Commercial Bank in Viet Nam.
Key words: Data Mining, Machine Learning, Bank, Customer Up-
grade, Predictive Model Classi cation, Logistic Regression, Decision Tree,
Random Forest, Python Language, Anaconda 3. | en_US |