149x Filetype PPTX File size 1.32 MB Source: www.wku.edu
Question • We’re looking to find customers’ usage patterns of banking methods over the course of a three month study period. Using 100,000 case examples. We’re wanting to find out which banking method is being used and which ones aren’t. Using that information we want to make the customers’ banking experience easier and more convenient. Background • 100,000 active customers were study. • The dataset has six attributes. Which one, ID, being a special attribute used to identify the customers. Attribute Name Model Role Measurement Level Description Examples ID ID Nominal Customer ID CNT_TBM Input Interval Traditional bank In-bank services; method transaction deposit and count withdraws. Building a relationship CNT_ATM Input Interval ATM transaction ATMs count CNT_POS Input Interval Point-of-sale MoneyGram, transaction count Western Union CNT_CSC Input Interval Customer service Tellers, personal transaction count bankers, financial advisors CNT_TOT Input Interval Total transaction count Data Mining Approach SAS Segmentation Approach • Using RapidMiner and SAS, we ran different filters to attempt to find any patterns or commonalities within the dataset. RapidMiner Segmentation Model Results • Cluster 0; traditional method the most similarities. • Clust 1-4 follower in order from greatest to least. • Most banking methods used 1. Traditional 2. ATM 3. Point-of-sale 4. Customer service
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