Vlassis Papapanagis Operations Director PREDICTA Group. Using Analytics to predict Customer s Behavior



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Transcription:

Vlassis Papapanagis Operations Director PREDICTA Group Using Analytics to predict Customer s Behavior

Today s organizations are facing many DISRUPTIVE FORCES fueling the need for analytics The emergence of big data The shift of power to 1 2 3 the consumer Accelerating pressure to do more with less Creating new opportunities to capture meaningful information from new varieties of data and content coming at organizations in huge volumes and at accelerated velocity Creating the need for organizations to understand and anticipate customer behavior and needs based on customer insights across all channels Creating the need for all parts of the organization to optimize all of their processes to create new opportunities, to mitigate risk, and to increase efficiency

IBM SPSS Predictive Analytics Discover patterns and associations and deploy predictive models that optimize decision-making Enable data and predictive modeling to guide frontline interaction Uncover unexpected patterns and associations from all data within your organization Perform advanced analytics, data mining, text mining, social media analytics and statistical analysis Use customized functionality for different skill levels Deliver optimized decisions to your operational systems and decision makers. Optimized decisions made possible Customer Analytics Acquire Grow Retain Operational Analytics Plan Manage Maximize Threat & Fraud Analytics Monitor Detect Control

and focusing on high-value initiatives in core BUSINESS AREAS 1 Customers Examples: Advanced client segmentation Leveraging customer sentiment analysis Reducing customer churn 2 Finance Enabling rolling plan, forecasting and budgeting Automating the financial close process Delivering real-time dashboards 3 4 Risk Operations Making risk-aware decisions Managing financial and operational risks Reducing the cost of compliance Optimizing the supply chain Deploying predictive maintenance capabilities Transform thread & fraud identification processes

Data at the heart of customer analytics High-value, dynamic - source of competitive differentiation Interaction data E-Mail / chat transcripts Call center notes Web Click-streams In person dialogues Attitudinal data Opinions Preferences Needs & Desires Market Research Social Media Descriptive data Attributes Characteristics Self-declared info (Geo)demographics Behavioral data Orders Transactions Payment history Usage history Traditional CRM Mentality

PREDICTA help you understand your customers during their lifecycle within your organization Marketer Collect data that augments each customer profile Analyze data to find actionable insights Decide on the best interaction for each customer Deliver messages, content and offers and capture reactions Manage budgets and processes and measure results Customer

Customer Analytics based on Customer life cycle

Types of Customer Segmentation

Cross-Selling case study in mobile operator based on Propensity Modeling

Churn Reduction case study in mobile operator based on Propensity Modeling

Social Network Analysis

CUSTOMER CASE STUDIES Decreasing Loyalty Intensifying Competition Soaring Customer Expectations Globalization Mobile Commerce Consumerization of IT Social Networking Increasing Transparency Channel Proliferation and Complexity Shrinking Wallet Share

TELCO Customer Success in PREDICTA s Territory OTE COSMOTE (GR) Segmentation Analysis, Churn & Cross Selling Models for Residential and corporate customers. Process Automation & Deployment for residential and corporate customers. Churn Signals for Pre-paid Customers Vodafone (GR) Segmentation Analysis, Churn & Cross/Up Selling Models. Makedonski Telekom AD (Skopje) Segmentation Analysis, Customer Analysis, Tariff Simulation and Cross Sell Models. Mobiltel (BG) Segmentation, Customer Retention and full monthly process Automation and Deployment. Telekom Romania, Telekom Albania - Segmentation Analysis, Churn Models for Residential Post Paid, Cross Sell Models, Pre paid Churn Analysis

TELCO Customer Success in PREDICTA s Territory Implementation of Social Networking Analysis (SNA) projects with the use of IBM SPSS Modeler Premium software for: Telenor Bulgaria Vodafone Albania Mobiltel Bulgaria The SNA application finds the relationships into fields that characterize the social behavior of individuals and groups. IBM SPSS Modeler Social Network Analysis identifies social leaders who influence the behavior of others in the network. In addition, you can determine which people are most affected by other network participants. By combining these results with other KPI measures you can create comprehensive profiles of individuals on which to base your predictive models. Models that include this social information will perform better than models that do not.

PREDICTA - Who We Are We are a company, specialized in applying predictive analytics to enterprises in any area such as the sales, marketing, operations, CRM and strategy. Our people combine technical as well as business experience in numerous industries aiming to bridge the gap between technology and its applications in business & strategy. We provide a comprehensive and complementary range of services across CRM, Customer Intelligence, Market Research and Training. Our vision is to implement successful projects that return high ROI to any company looking to shift their customer s experience to the next level.

PREDICTA - What We Do CRM Gap Analysis for CRM IT Infrastructure for CRM Campaign Management Event/Trigger based Marketing Customer Centricity Strategy Customer Intelligence Customer Profiling Customer Segmentation Customer Behavior Prediction Life Cycle Management & NBA Social Network Analysis Market Research Multi-attribute Segmentation Share of Wallet Analysis SWOT Analysis Customer Satisfaction & Loyalty Drivers Importance Analysis Training Building Effective CRM Segmentation Management Campaign Management Data Mining Techniques Next Best Activity & LCM

Thank You! For more information visit our website www.predicta.ro Vlassis Papapanagis vpapapanagis@predicta.gr Mob: +30 6978332360