Title: Sources and Uses of Marketing Data
1Sources and Uses of Marketing Data
2Customer Data
- All sales, promotion, and service activity
relating to a customer. - Best bets for use in predictive statistical
models. - Not available in equal measure for every customer
- More data available for old customers.
- Appropriate measures that use time a customer has
been on file hence required.
3Cohort or Enrollment Group
- Groups that contain customers that have been on
file for similar lengths of time. - Basis for all forecasting systems.
- Used to alert management on changes in lifespan,
and lifetime value.
4Other Sources
- Billing status, service interactions, back
orders, product shipment, claims history etc. - Marketing department internal operations
- Customer classifications
- Response scoring models
- Expected sales
- Marketing Objectives
- Projected customer value
- Expected promotion costs.
5Response Data
- Recording a purchase in response to a coded
promotion. - Example Multistep lead generation process.
6Problems in coding response data
- Transactions occur across multiple channels
- Matching promotions and responses to appropriate
customers. - For example, in the case of retail promotions
point of sale scanners cannot capture customer
identification. - Cost minimization in call centers may not allow
promotion and customer codes to be recorded. - Responses may not be matched at the individual
customer level but at the zip code level.
7Response Attribution
- What if the customer is sent multiple promotions
and he/she responds to one of them? - What if the customer passes along the promotion
to someone he knows?
8Prospect Data
- People who have been promoted in the past but
have not made a purchase yet. - Prospect Databases
- Used when there is relatively large variation in
potential customer values. - Primary applications
- Track promotion history
- Calculate number and type of lists that contain
information on a prospect - Combine descriptive statistics from internal
sources
9Prospect Data
- Two-Way Customer Dialogues
- Focus on developing and managing a relationship
with each customer. - Manage communication across all channels
- Example Financial Services
- A customer may not be ready to invest currently.
- Keep the communication channel open with the
customer in order to convert the customer at the
appropriate time.
10Prospect Data
- All information is potentially important.
- Data gathering is an ongoing process.
- Begins before the first purchase is made.
- Pay careful attention to
- How the customer is contacted?
- When the customer is contacted?, and
- What data can be captured at each stage?
11Nontransactional Data Sources
- Data provided directly by individuals about
themselves. - Third Party vendors.
- Directly supplied data
- Obtained from lead generation questionnaires,
warranty cards etc. - Very critical for relationship marketing.
12Nontransactional Data Sources
- Directly supplied data consists of three major
types - Behavioral Data
- Attitudinal Data
- Demographic Data
- Primarily a forte of marketing researchers until
recently. - Marketing research studies have information on
only a sample of the customers. - This information is not enough to create
customized, individual level campaigns.
13Macro vs Micro level data
- Consider two companies and two customers
- Firms have same shares in both figures but their
customers have different purchase patterns
Firm 1 Firm 2
Customer A 1 2
Customer B 1 2
Firm 1 Firm 2
Customer A 0 4
Customer B 2 0
14Nontransactional Data Sources
- Relationship Marketing
- Third party data is so commonly available that it
does not provide a competitive advantage. - Leverage investments in customer service to
collect individual information during regular
business interactions. - Advantages
- Better coverage
- Data directly relevant to marketing objectives,
and - Faster acquisition cycles.
15Nontransactional Data Sources
- Relationship Marketing-The Advent of internet
- Lead generation
- Automated brochures provide wealth of product
information and enable collection of e-mail,
address etc. - Surveys can be posted on the web
- Questions in the survey can be tailored to each
customer. - Growing evidence that customers are less
reluctant to provide information on web sites. - Privacy issues need to accounted for.
- If relationships are developed customers are
ready to provide sufficient information.
16Example Insurance Marketers
- Age is the most critical information needed.
- Third Party sources provide unreliable
information and have poor coverage. - Insert a small survey in initial promotion
packets. - Inquire in the surveys about
- Date of birth,
- Other insurance products customer currently owns,
and - Level of Satisfaction.
17Example Insurance Marketers
- Primary benefits
- Better targeting
- Better mailing efficiency
- Reduced dependence on less accurate data
- Auxiliary benefits
- Eliminate or reduce promotions to those who are
not responding. - Use survey information to offer additional
products.
18Using Questionnaires
- Internal customer data does not include
information on willingness to purchase. - Use a two-step communication strategy.
- First Step
- Simple, inexpensive attitude and behavior survey
- Second Step
- Expensive brochures that contain product
information and special offers. - People who respond in the first step but not the
second provide information for relationship
marketing.
19Survey Data Assigning Customers to Segments
- Segments Small relatively similar pockets of
customers. - Customers within a segment are similar to each
other and differ from customers in other
segments. - Issues
- Confirm that segments exist
- Determine attitudes and characteristics of each
segment. - Design cost-effective ways to assign individuals
to appropriate segments.
20Survey Data Assigning Customers to Segments
- Use survey responses to identify characteristics
of segments. - Characteristics useful in designing customized
campaigns. - Responses may be available only from a sample of
customers. - Very expensive to send surveys to all the
customers in the database.
21Survey Data Assigning Customers to Segments
- Relate survey data to internal customer data.
- Use statistical models to infer segments
membership based on - Internal data, and
- Relation between internal data and survey
responses. - Response rate depends on the relation between an
organization and its customers.
22Profiling Assigning Customers to Segments
- Ways to create customer profiles
- - RFM
- -Product affinity
- - Demographics
- - Cluster or lifestyle coding
Based on behavior
Based on attitudes, demographics, lifestyle
23Profiling Assigning Customers to Segments
- Classification by product affinity
- - Affinity starts from customers perspective
- - Use Cross-Buying rates.
- -This is done by cross-tabulating purchasers of
one product against purchasers of another product
24ProfilingCross-Buying rates between A and B
- A B-No B-Yes Total
- No row 268431 8328 276759
- 96.99 3.01 100
- Yes row 27023 12444 39467
- 68.47 31.53 100
- Total row 295456 20772 316228
- 93.43 6.57 100
25ProfilingAffinity Matrix showing likelihoods of
purchase
- Prod A Prod B Prod C ProdD
- Prod A eq 10.5 2.4 4.5
- Prod B 10.5 eq 9 1.1
- Prod C 2.4 9 eq 3
- Prod D 4.5 1.1 3 eq
26Third Party Sources
- Primarily demographic, attitudinal, lifestyle and
financial data. - Available at the zip code and census tract level.
- Census tract (or block) level is a finer
classification but is more expensive and requires
additional statistical techniques.
27Third Party Sources
- Zip code used when number of customers or
prospects is large (gt 100,000). - Zip code data can be overlaid with purchase data
for profiling purposes. - Major Products
- ClusterPlus (First Data Solutions)
- PRIZM (Claritas)
- MicroVision (National Decision Systems)
- Mosaic (Experian).
28Third Party Sources
- Data is primarily averaged at the zip code level.
- Based on the premise that
- Birds of the same feather.
- Issues
- Possibility of outdated information.
- Results in promoting to the wrong people.
- Useful only when any form of prospect or customer
information is unavailable.
29National Databases File Enhancement
- Nearly total coverage of US households.
- Attitudinal Data
- Contains information on general opinions, and
perceptions of the people. - Useful when launching new products/services.
- Lifestyle Data
- Provides information on personal interests, and
leisure time activities. - Result of combining geo-demographic and market
research data. - Example Claritas (geo demographic)
- Simmons (Market Research)
30National Databases File Enhancement
- Lifestyle Data (Continued)
- Improves the reach of print and electronic media.
- Representative strategies for use
- List profiling.
- Use the lifestyle characteristics for only
customers with the highest priority. - Apply profiles to prospect files.
- Used as a guideline for obtaining other lists.
31National Databases File Enhancement
- Financial Data
- Largest providers Experian, and Transunion.
- Data on credit card purchases, installment loans,
applications for credit, and payment history. - Marketers can send their house lists to financial
data providers. - The financial data providers then provide a
profile of their best customers. - Information at segment level not individual
level. - Then prospect list can be used to send promotions
to prospects that match profiles of best
customers.
32National Databases File Enhancement
- Demographic Data
- Available at the household or individual level.
- When certain data (e.g., age) is unavailable
- A reasonable inference can be made for a majority
of the individuals. - Multiple sources
- Motor Vehicle Registrations (Polk)
- Telephone and City Directory (First Data
Solutions and Metromail) - Values that are available are accurate and are
not summaries at the Zip Code Level.