TNS EX A MINE BehaviourForecast Predictive Analytics for CRM. TNS Infratest Applied Marketing Science



Similar documents
How Organisations Are Using Data Mining Techniques To Gain a Competitive Advantage John Spooner SAS UK

Data Mining + Business Intelligence. Integration, Design and Implementation

Data Analytical Framework for Customer Centric Solutions

CRM Analytics for Telecommunications

ISSN: (Online) Volume 3, Issue 4, April 2015 International Journal of Advance Research in Computer Science and Management Studies

Data Mining is sometimes referred to as KDD and DM and KDD tend to be used as synonyms

An Introduction to Advanced Analytics and Data Mining

White Paper. Data Mining for Business

Potential Value of Data Mining for Customer Relationship Marketing in the Banking Industry

Data Science & Big Data Practice

CUSTOMER RELATIONSHIP MANAGEMENT (CRM) CII Institute of Logistics

Data Mining in CRM & Direct Marketing. Jun Du The University of Western Ontario jdu43@uwo.ca

Using reporting and data mining techniques to improve knowledge of subscribers; applications to customer profiling and fraud management

Marketing Advanced Analytics. Predicting customer churn. Whitepaper

What is Customer Relationship Management? Customer Relationship Management Analytics. Customer Life Cycle. Objectives of CRM. Three Types of CRM

Helping retailers maximise customer lifetime value

Created to make a. Specialists in data and campaign management

TEXT ANALYTICS INTEGRATION

DIGITS CENTER FOR DIGITAL INNOVATION, TECHNOLOGY, AND STRATEGY THOUGHT LEADERSHIP FOR THE DIGITAL AGE

Data Mining Techniques in CRM

ElegantJ BI. White Paper. The Competitive Advantage of Business Intelligence (BI) Forecasting and Predictive Analysis

Journal of Management Systems

Past, present, and future Analytics at Loyalty NZ. V. Morder SUNZ 2014

Product recommendations and promotions (couponing and discounts) Cross-sell and Upsell strategies

Customer Analytics. Turn Big Data into Big Value

Bigger Data for Marketing and Customer Intelligence Customer Analytics Roadmap

MS1b Statistical Data Mining

Data are everywhere. IBM projects that every day we generate 2.5 quintillion bytes of data. In relative terms, this means 90

Chapter. Enterprise Business Systems

Business Analytics and Data Mining for CRM Business Analytics and Data Mining for CRM: Jumpstart workshop

Analytical CRM solution for Banking industry

Predictive Analytics in an hour: a no-nonsense quick guide

Data Mining Solutions for the Business Environment

Database Marketing simplified through Data Mining

Driving Customer Acquisition and Retention with Predictive Analytics

Data Mining Algorithms Part 1. Dejan Sarka

Predictive Analytics: Extracts from Red Olive foundational course

Maximize Revenues on your Customer Loyalty Program using Predictive Analytics

Fluency With Information Technology CSE100/IMT100

Hello, Goodbye. The New Spin on Customer Loyalty. From Customer Acquisition to Customer Loyalty. Definition of CRM.

Nine Common Types of Data Mining Techniques Used in Predictive Analytics

Data Mining with SAS. Mathias Lanner Copyright 2010 SAS Institute Inc. All rights reserved.

Federico Rajola. Customer Relationship. Management in the. Financial Industry. Organizational Processes and. Technology Innovation.

Predictive Analytics in an hour: a no-nonsense quick guide

Principles of Data Mining by Hand&Mannila&Smyth

Chapter 12 Discovering New Knowledge Data Mining

Enhanced Boosted Trees Technique for Customer Churn Prediction Model

Deriving Value From Big Data Visual, Predictive, GeoLocation and Event Analytics

CUSTOMER RELATIONSHIP MANAGEMENT (CRM) CII Institute of Logistics

Analyze It use cases in telecom & healthcare

Master of Science in Marketing Analytics (MSMA)

Automated Predictive Analysis. Tomer Steinberg

Customer Relationship Management using SAS Software. Julian Kulkarni, SAS Europe Joanna Crosse, SAS UK

Prediction of Stock Performance Using Analytical Techniques

Predictive Modeling Techniques in Insurance

Easily Identify Your Best Customers

Integrating CRM with ERP

Five Predictive Imperatives for Maximizing Customer Value

A Basic Guide to Modeling Techniques for All Direct Marketing Challenges

EVENT HISTORY AND MULTILEVEL ANALYSIS UNIT

Customer and Business Analytic

Data Mining Algorithms and Techniques Research in CRM Systems

DATA DATA: THE CORNERSTONE OF DIGITAL ADVERTISING

Customer Relationship Management (CRM)

Using SAS Enterprise Miner for Analytical CRM in Finance

Cross Sell. Unlocking the value from your customer relationships. < PREVIOUS NEXT > CLOSE x PRINT. Visit our website:

Five Predictive Imperatives for Maximizing Customer Value

KnowledgeSTUDIO HIGH-PERFORMANCE PREDICTIVE ANALYTICS USING ADVANCED MODELING TECHNIQUES

Business Analytics and Credit Scoring

Data Mining Techniques

Predictive Dynamix Inc

Predictive Modeling and Big Data

DATA MINING TECHNIQUES AND APPLICATIONS

How To Get More Business From Big Data And Analytics

CUSTOMER RELATIONSHIP MANAGEMENT CONCEPTS AND TECHNOLOGIES

Predictive Analytics for Retail: Understanding Customer Behaviour

Predictive modelling around the world

Mobile Phone APP Software Browsing Behavior using Clustering Analysis

INDIAN STATISTICAL INSTITUTE announces Training Program on Statistical Techniques for Data Mining & Business Analytics

Data are everywhere. IBM projects that every day we generate 2.5

DISCOVER MERCHANT PREDICTOR MODEL

A SAS White Paper: Implementing a CRM-based Campaign Management Strategy

Increasing Retail Banking Profitability through CRM: the UniCredito Italiano Case History

EXPLORING & MODELING USING INTERACTIVE DECISION TREES IN SAS ENTERPRISE MINER. Copyr i g ht 2013, SAS Ins titut e Inc. All rights res er ve d.

Index Contents Page No. Introduction . Data Mining & Knowledge Discovery

[Big]-Data Analytics for Businesses SESSION 1

CRM: Making it Simple for the Banking Industry Aslam Chaudhry, SAS Institute Inc., Cary, NC

ANALYTICS CENTER LEARNING PROGRAM

How2Guide. How Marketers Can Tap into Customer Data to Improve Customer Profitability and Campaign Effectiveness

CRM project. Business impact and technology challenges

Adobe Analytics Premium Customer 360

Use of Data Mining in Banking

Transcription:

TNS EX A MINE BehaviourForecast Predictive Analytics for CRM 1

TNS BehaviourForecast Why is BehaviourForecast relevant for you? The concept of analytical Relationship Management (acrm) becomes more and more important for most companies. The objective of CRM is to win long-term profitable customers, bind them to the company, increase their value and if required win back lost customers by a selective and individual addressing. The essential basis is the identification of profitable customers and the in-depth knowledge about their needs and behaviour in every phase of the customer life cycle. For this purpose TNS BehaviourForecast provides valuable information by analysing all available data sources and by extracting the relevant information for a specific problem via up-to-date Data Mining Techniques. 2

TNS BehaviourForecast Analytical CRM along the customer life cycle Business Volume Targeting / Acquisition Strengthening Relationship Regular Intensifying Relationship Retention Win-Back Strategies Re-activated Prospect New Lost EX A MINE ProspectFinder Target Group Selection Response Rate Analyses AffinityTracer Market Basket Analysis Cross- and Up-Selling-Analyses Lifetime Value ChurnPredictor Churn Analysis Factors influencing Loyalty 3

Analytical CRM with TNS Questions along the customer life cycle ProspectFinder AffinityTracer ChurnPredictor Objective: cost-efficient new customer acquisition Which is the best target segment with the highest affinity to my offer and potentially profitable customers? Objective: increasing customer profitability What are my most profitable customers ( Lifetime Value)? Which cross- / upselling actions are most promising? Objective: avoiding migration What are the crucial factors of customer retention? How can you identify churners early (Churn Prediction)? Lower cost of acquisition by targeting new customers well-directed Individually addressing customers, higher revenues Increasing brand loyalty, cost-efficient realisation of loyalty programmes 4

Efficient CRM via Data Mining Increase of information allows well directed customer contact ProspectFinder Systematic selection of addresses with high purchase probability Limitation to potentially profitable customers AffinityTracer Which products are often bought jointly? Which customers bought only parts of a common combination? ChurnPredictor Building typical churn profiles Derivation of churn probability Identification of most important factors of customer retention Marketing activities only to selected addresses Minimisation of acquisition cost Forwarding of customers with high cross-/up-selling potential to sales force Selection of customers at risk and forwarding to sales force Win-back activities 5

Phase-specific Data in the Life Cycle Holistic examination of available information Master data Potential customers Active customers Former customers Master data Response behaviour Transactions behaviour Churn behaviour Address Age Sex / Gender Campaign affinity / history Credit report Self-disclosure Use of product Payment behaviour Channel preferences... Reason for termination (activ / passive?) Reactivation TNS BehaviourForecast CRM: Selection of target groups + individually addressing customers 6

TNS DataFusion + BehaviourForecast Holistic examination of internal and external data Internal External database Attitudes Competition / total market Psycho-social structural data Addresses Response Transactions Churns Level: Person TNS TRI*M Level: Homogenous micro segments TNS Access Panels Level: Homogenous micro segments Microgeographics Lifestyles Level: e.g. street TNS DataFusion + BehaviourForecast CRM: Selection of target groups + individually addressing customers 7

Tasks and Problems of Data Mining Broad spectrum of methods for specific analyses Credit rating / scoring Forecasting s - Segmentation - Analysis of potential Faud detection Transactions patterns Classification Segmentation Association Decision trees Neuronal networks Classical methods Clustering methods Association methods Tasks Problems Methods / Algorithms 8

The TNS Algorithms-Toolbox Multivariate statistics Logistic, Categorical, Linear Regression, EM Algorithm Multivariate Adaptive Regression Splines (MARS) Ridge Regression, Robust Regression Cluster Analysis, Latent Class Analysis Decision Trees / Decision Rules, Automatic Learning C&RT, C5.0, QUEST, CHAID, Association rules MART Multiple Additive Regression Trees, Random Forest Nearest Neighbours / Instance based learning Profiler Artificial Neural Networks Cascade Correlation Learning Architecture, MLP, SOM Hybrid Methods Automatic OLAP Navigation and Search Genetic Algorithms for variable selection Neuro Fuzzy Algorithms, interactive visualisation of data 9

TNS Contact Dr. Robert Hartl Tel. +49 89 5600 1320 robert.hartl@tns-infratest.com Cornelia Lotz Tel. +49 89 5600 2137 cornelia.lotz@tns-infratest.com 10