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BIG DATA AND THE FINANCIAL SECTOR April, 2015 WHAT IS BIG DATA? Of data today was generated in the last Years * Based on IBM statistics. 2 WHY BIG DATA? Understand the past. What happened? Predict the future. What should we do? Immediate action. Execute like a hero. Competitive Advantage Direction – navigate through complexity. Big Data Analytics Execution – the right person, the right time. Predictive Analytics Results – accurate and efficient. Traditional BI Ad Hoc Reports Direct mail and telemarketing Reports and Dashboards The Evolution of Data and Analytics 3 KEY COMPONENTS FOR BIG DATA ANALYTICS Identification and aggregation of relevant data points Technical infrastructure to host large data sets Machine learning algorithms to predict behavior Accurate interpretation of results Data privacy and customer consent 4 CHALLENGES FOR BANKS CHALLENGE ISSUE HOW BIG DATA CAN HELP Acquisition of Customers Little to No History Use New Sources of Expand Target Market Dormant Customers Up to One Third of Have Little/No Use Data Analysis to of Financial Products 5 EXISTING CUSTOMERS: USING TRANSACTION DATA TO UNDERSTAND PROPENSITY Account Balance Savings Accounts Distribution* Customer Age *Source: WSBI/HFC 6 TARGET PRODUCTS AT LIKELY RESPONDERS Cluster Description Percentage of Overall Accountholders Target Product Wealthy & Engaged Older, high balance, active savers 19% Mortgage/Retirement Offers Wealthy but Inactive Older, high balance, non-savers 19% Savings Promotions Youth Accounts Young, some balance & activity 19% Mobile Banking/Savings High Utilization Low balance, active savers 14% Checking Promotions High Churn Risk Low balance, non-savers 28% Retention Promotions TOTAL AVERAGE 100% 7 NEW CUSTOMERS: USE MOBILE DATA TO QUALIFY AND CONTACT 70% PROBABILITY OF ABOVE AVERAGE INCOME 61,5% 60% 50,6% 50% 40% 35,8% 31,6% 33,2% MOBILE POPULATION 30% 24,8% 22,6% 22,1% 20% 11,6% 10,5% 10% 0% 1 2 3 4 5 Cignifi Score 8 OTHER APPLICATIONS FOR MOBILE DATA • Financial Product Marketing • Credit Scoring • Insurance Propensity • Airtime Credit • Mobile Value Added Services 9