Predictive Analytics for Retail: Understanding Customer Behaviour



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

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

Using predictive analytics to maximise the value of charity donors

Predictive Analytics for Database Marketing

Predictive Maintenance for Effective Asset Management

TEXT ANALYTICS INTEGRATION

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

Introduction to Predictive Analytics: SPSS Modeler

OUR FOCUS YOUR GROWTH

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

Maximizing Guest Experiences

Decisioning for Telecom Customer Intimacy. Experian Telecom Analytics

Predictive Analytics: Turn Information into Insights

The top 10 secrets to using data mining to succeed at CRM

Taking A Proactive Approach To Loyalty & Retention

PREDICTIVE ANALYTICS IN HIGHER EDUCATION NOVEMBER 6, 2014

IBM Predictive Analytics Solutions

The Retail Analytics Challenge: Smarter Retail through Advanced Analytics & Optimization

PREDICTIVE ANALYTICS DEMYSTIFIED

Data Science & Big Data Practice

Decisioning for Telecom Customer Intimacy. Experian Telecom Analytics

The ReMark Proposition....at a glance. Maximum Value Creation

Predictive Analytics Applications for Retailers

Customer Relationship Management

An Introduction to Advanced Analytics and Data Mining

Business Analytics and the Nexus of Information

Visa Consulting and Analytics

Customer Care for High Value Customers:

BEYOND BUSINESS INTELLIGENCE: How banks can use Advanced Analytics to win in the experience era

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

Neil Hayward Customer Intelligence Solutions Program Manager SAS EMEA Copyright 2003, SAS Institute Inc. All rights reserved.

How To Use Social Media To Improve Your Business

Three proven methods to achieve a higher ROI from data mining

Overview, Goals, & Introductions

Beyond Traditional Management Reporting IBM Corporation

How To Get More Business From Big Data And Analytics

EMEA CRM Analytics Suite Magic Quadrant Criteria 3Q02

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

Growing Customer Value, One Unique Customer at a Time

How To Transform Customer Service With Business Analytics

Infinity Buyerlytics System Multichannel Customer Care Solutions

Data Products and Services. The one-stop-shop for all your business-to-consumer data requirements

CoolaData Predictive Analytics

Using Data Mining to Detect Insurance Fraud

Created to make a. Specialists in data and campaign management

Business analytics for banking

SAP Predictive Analysis: Strategy, Value Proposition

Customer Relationship Management (CRM)

7 SMART IDEAS TO GROW YOUR SAAS BUSINESS

Navigating Big Data business analytics

Easily Identify Your Best Customers

An Enterprise Framework for Business Intelligence

Combining the Power of Predictive Analytics with IBM Cognos Business Intelligence

Predictive Analytics for Donor Management

IBM Next Best Action. Tony Hocevar Business Analytics Growth Markets

Solve your toughest challenges with data mining

DISCOVER MERCHANT PREDICTOR MODEL

Customer Retention. COMEX, Implement 29 th April Bjørn Büchmann-Slorup Head of Sales Development & Analytics Danske Bank

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

Multichannel Customer Care

Unlock the business value of enterprise data with in-database analytics

Major Trends in the Insurance Industry

IBM SPSS Modeler Professional

ACS 3907 E-Commerce. Instructor: Kerry Augustine March 3 rd Bowen Hui, Beyond the Cube Consulting Services Ltd.

Retention-focused credit management

Branch Staffing: Everything has ALREADY changed and this is only. the beginning. CloudCords Forecaster. Save up to $20,000 per branch per year

The Future of Customer Engagement. Rusty Warner, Vice President Product Marketing Alterian

Five predictive imperatives for maximizing customer value

GENERATE REVENUES WITH AN EFFECTIVE PARTS WHOLESALE STRATEGY.

Technology Trends in Mortgage Lending - Mortgage Marketing

Marketing Optimization. An Experian white paper

Solve Your Toughest Challenges with Data Mining

Increasing marketing campaign profitability with Predictive Analytics

eircom gains deep insights into customer experience

THE PATH TOWARDS AN EXCEPTIONAL CUSTOMER EXPERIENCE

Solve your toughest challenges with data mining

IBM Analytical Decision Management

Contact Center Trends and Future

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

> Cognizant Analytics for Banking & Financial Services Firms

SAP Solution Brief SAP HANA. Transform Your Future with Better Business Insight Using Predictive Analytics

Five Predictive Imperatives for Maximizing Customer Value

IBM's Fraud and Abuse, Analytics and Management Solution

SAP Predictive Analysis: Strategy, Value Proposition

Client focused. Results driven. Ciber Retail Solutions

Whitepaper. Power of Predictive Analytics. Published on: March 2010 Author: Sumant Sahoo

Banking On A Customer-Centric Approach To Data

Voice of the Customer: How to Move Beyond Listening to Action Merging Text Analytics with Data Mining and Predictive Analytics

Real World Application and Usage of IBM Advanced Analytics Technology

Get to Know the IBM SPSS Product Portfolio

Insurance customer retention and growth

BUSINESSOBJECTS PREDICTIVE WORKBENCH XI 3.0

CONNECTING DATA WITH BUSINESS

Transcription:

Predictive Analytics for Retail: Understanding Customer Behaviour Jarlath Quinn Analytics Consultant Rachel Clinton Business Development www.sv-europe.com

FAQ s Is this session being recorded? No Can I get a copy of the slides? Yes, we ll email a PDF copy to you after the session has ended. Can we arrange a re-run for colleagues? Yes, just ask us. How can I ask questions? All lines are muted so please use the chat facility if we run out of time we will follow up with you.

Premium, accredited partner to IBM specialising in the SPSS Advanced Analytics suite. Team each has 15 to 20 years of experience working in the predictive analytic space - specifically as senior members of the heritage SPSS team

What do we mean by Predictive Analytics? Predictive analytics encompasses a variety of techniques from statistics and data mining that analyze current and historical data to make predictions about future events Analysis of structured and unstructured information with mining, predictive modeling, and 'what-if' scenario analysis.

Interest in Predictive Analytics Predictive Analytics Business Intelligence

Core Predictive Analytics Applications attract grow fraud retain risk

Analytics in Retail Segmentation Life Time Value Loyalty Purchase Behaviour RFM Store clustering Propensity Modelling Response Cross-Sell Churn Reactivation Voucher Redemption Other Applications Affinity/Basket Analysis LTV prediction Forecasting Text Mining Satisfaction Modelling

Typical Application Aims Profit Lower Cost of Acquisition Cross Sell Up Sell Maximise Lifetime Value Minimise Defaults Prevent Fraud Prevent Waste Maintain Availability Market Share Acquire More Customers Build a Reputable Brand Anticipate Demand Maximise Satisfaction Maximise Loyalty Address Poor Satisfaction Lower Churn Rates Reactivate Passive Customers Grow Defend

Propensity Modelling

Store Clustering

Sales Forecasting

Text Mining

How do we do this? By utilising a powerful, proven methodology CRISP-DM: Cross-Industry Standard Process for Data Mining Each application can be developed and progressed through a series of key phases

Competitive advantage How do we do this? By exploiting a wider data landscape Social Media Data Interaction Data Descriptive Data EPOS Data Degree of intelligence

How do we do this? By using powerful IBM advanced analytics technology

How do we do this? By integrating the resultant insight with existing systems

SPSS Retail Users Include

Quick Demo

Advice to get started Consider adopting a proven methodology e.g. CRISP-DM (www.crisp-dm.eu) Don t get hung up on modelling techniques - focus on Business Understanding and Deployment Consider the full data landscape don t wait for the perfect data warehouse Consider the sorts of roles involved /impacted Consider integration with other business insight systems (e.g. MI/BI) How will you know its worked? Focus on measuring the benefit e.g. response rate lift, increased cross-sell, revenue/profit impact You may not need to recruit specialists: data literate, business focussed people can learn how to do this.

Contact us: +44 (0)207 786 3568 info@sv-europe.com Thank you www.sv-europe.com