LEVERAGE BIG DATA ANALYTICS TO IMPROVE CUSTOMER EXPERIENCE



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Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. LEVERAGE BIG DATA ANALYTICS TO IMPROVE CUSTOMER EXPERIENCE ASEAN BANKER FORUM 2014 MARK ESCAURIAGA MARK.ESCAURIAGA@SAS.COM

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. We see our customers as invited guests to a party, and we are the hosts. It's our job every day to make every important aspect of the customer experience a little bit better. Jeff Bezoz, Amazon

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. The Future of Customer Experience Management?

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. MARKETING TRANSFORMATION LANDSCAPE EMPOWERED CONSUMERS: Proliferation of Digital Channels EXPLOSION OF DATA: Big Data vs. Right Data EVOLVING CMO ROLE: Dual Mindset analytical creative

THE VISION A CLOSED LOOP CUSTOMER EXPERIENCE MANAGEMENT

CUSTOMER JOURNEY SAS DECISION HUB CONCEPT CUSTOMER DECISION HUB

OMNI-CHANNEL MARKETING SOLUTION CONCEPT THE MARKETING DECISION HUB Marketing campaigns Service-Activities Sales programs Ad-hoc-actions CUSTOMER DECISION HUB Regular communications Contact strategies

OMNI-CHANNEL MARKETING SOLUTION CONCEPT THE MARKETING DECISION HUB CUSTOMER DECISION HUB Priorities Strategic decisions Contact rules Constraints Channel restrictions Budget-Limits Contact Permissions

OMNI-CHANNEL MARKETING SOLUTION CONCEPT THE MARKETING DECISION HUB CUSTOMER DECISION HUB Transactional data Analytical models Events Context Scores Risk Potentials History

OMNI-CHANNEL MARKETING SOLUTION CONCEPT THE MARKETING DECISION HUB Real-Time Orchestration using the CUSTOMER DECISION HUB Request 1 Next-Best-Action (NBA) Optimized Offers (NBA) Reply 2 3 Real-Time Analytics Decision Logic Optimization & Orchestration Rules Standard + Outbound-Suppressions Communication

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. YOUR CUSTOMERS DATA AS YOUR BIGGEST ASSET Demographics Customer Life-Stage Life-Cycle Stage Who They Are Their Loyalty Product Relationship H/W, Usage Plans VAS Apps / Content What They Buy Their Value Current Future Usage Patterns Key Events Their Usage 360 CUSTOMER INTELLIGENCE EXPERIENCE Their Potential Products Services New Offerings Social Network Role Social Value Channels Content, Process Timing, Location Who They Influence How They Interact What They Feel & Say Commentary Observations Questions

Exploration = Insighting Insighting = Empowerment

Mobile App Web Browser In-memory Analytics

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. SAS VISUAL ANALYTICS DEMONSTRATION 3 BUSINESS QUESTIONS 1. Where can we find the growth opportunities for the business? 2. How do we maximize growth while managing risk? 3. What can we offer to delight our best customer?

SAS VISUAL ANALYTICS DEMONSTRATION

TIME FOR CHANGE Consistent & Optimized Customer Experience Omni-Channel Future-Ready

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. BENEFITS OF CUSTOMER EXPERIENCE FOCUSED ORGANIZATION Minimize CUSTOMER COMPLAINTS Who They Are Their Loyalty Increase CUSTOMER ACQUISITION UP-SELL/ CROSS-SELL What They Buy Their Value Maximize REVENUE Increase TRANSACTIONS Their Usage CUSTOMER EXPERIENCE Their Potential Decrease CHURN Improve CUSTOMER RETENTION Minimize RISK Who They Influence How They Interact What They Feel & Say Boost PRODUCT/SERVICE USAGE

Copy right 2012, S AS Ins titute Inc. A ll rights reserve d. LEVERAGE BIG DATA ANALYTICS TO IMPROVE CUSTOMER EXPERIENCE ASEAN BANKER FORUM 2014