Syndicated Data … Analysis for… Brand… Scientists.

Post on 23-Feb-2016

45 views 0 download

Tags:

description

Syndicated Data … Analysis for… Brand… Scientists. Learning Objective Give students hands-on experience using syndicated data to generate market insights, which in turn drive actionable category and product/brand plans. Some Questions We Often Ask. Score keeping - PowerPoint PPT Presentation

Transcript of Syndicated Data … Analysis for… Brand… Scientists.

Syndicated Data …

Analysis for…

Brand…

Scientists.

Learning Objective

Give students hands-on experience using syndicated data to generate market insights, which in turn drive actionable category and product/brand plans.

Some Questions We Often Ask

Score keeping How are we doing vis-à-vis last year? the competition?

the status quo?

Understand “causality” What factors influence our sales and share? What is

their relative influence?

Prescription What should we do?

What is Syndicated data?

Aggregation of structured or unstructured data from multiple people or companies for redistribution to the market.

Examples and Uses: Sales: point-of-sale, consumer panel, shopper

card Attitudes & Trends: survey data (Mintel,

Simmons, Forrester) Economic: Repackaged public or government

data Media: TV/Radio/Print measurement, social

media (facebook), mobile, internet (Buzz, ads, search), couponing

Source: Eric Schmidt

Big Data

15 out of 17 sectors in the United States havemore data stored per companythan the US Library of Congress*McKinsey Global Institute, June 2011

Source: Eric Schmidt

Market Research Companies by U.S. Revenue

Source: http://www.marketingpower.com/ResourceLibrary/Publications/MarketingNews/2012/6-30-12/Hono-Top-50-Chart.pdf

Approximate Schedule

Day 1 (Wed. Feb.27)- Intro; Scanner Data; Intro to Market Response

Analysis; Experimentation Lab; Market Response Analysis Lab; Category Analysis Lab; Resource Allocation

Day 2 (Thurs. Feb.28)- Promotion Analysis; Misc. Econometrics Topics;

Vendor Perspective (guest speaker); Mktg Mix Models (guest speaker); Web Analytics (guest speaker); Social Media (guest speaker); SAS Programming Lab

Day 3 (Fri. Mar.1)- Brita Case Study; Valuing Customers; Leveraging

Customer Databases (guest speaker); Reading Published Studies