ABM Process
|
System Function
|
Sub-Function
|
Number of
Vendors
|
Identify Target Accounts
|
Assemble Data
|
External Data
|
28
|
Select Targets
|
Target Scoring
|
15
|
|
Plan Interactions
|
Assemble Messages
|
Customized Messages
|
6
|
Select Messages
|
State-Based Flows
|
10
|
|
Execute Interactions
|
Deliver Messages
|
Execution
|
19
|
Analyze Results
|
Reporting
|
Result Analysis
|
16
|
While External Data is one of the broadest sub-functions described in the Guide, Target Scoring is one of the narrowest. Target Scoring isn’t just any use of predictive analytics, which can also include things like finding surges in content consumption (used to identify intent) or recommending the best content to send an individual. As the Guide defines it:
Vendors in this category use statistical techniques to select target accounts. The models most often predict whether an account will make a purchase, but sometimes predict events such as renewing a contract or becoming an opportunity in the sales pipeline. Scores can be built for individuals as well as accounts, although account scores are most important for ABM. Many scoring vendors gather external data from public or commercial sources (or both) to gain more inputs for their models. They may or may not share this data with their clients, and they may or may not provide net new records. Target scoring is more than tracking intent surges, which do not capture other factors that contribute to likelihood of purchase.
The vendors in this category include the specialized scoring firms (Infer, Lattice Engines, Leadspace, Mintigo, Radius) plus companies that do scoring as part of a data offering (Avention, Datanyze, Dun & Bradstreet, InsideView, GrowthIntel) or for message targeting (Demandbase, Everstring, Evergage, Mariana, MRP, The Big Willow). Beyond those fundamental differences in the vendor businesses, specific differentiators include:
- the range of data used to build models, including which data types and how much is proprietary to the vendor
- amount of client data (if any) loaded into the system and retained after models are built
- advanced matching of unaffiliated leads to accounts (an important part of preparing data for account-level modeling)
- tracking movement of accounts and contacts through different segments over time (as opposed to simply providing scores or target lists on demand)
- self-service model building (as opposed to relying on vendor staff to build models for clients)
- separate fit, engagement, and intent scores (as opposed to a single over-all score)
- range of model types created (fit, engagement, behavior, product affinity, content consumption, etc.)
- limits on number of models included in the base fee
- implementation time (for the first model) and model creation time (for subsequent models
- sales advisory outputs including talking points, intent indicators, product recommendations, content suggestions, etc.
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