cClone
Positive event
(variable to explain) to select the targeting parameters to be considered by the algorithm for the creation of the clone
Negative event (Universe)
(explanatory variables) characterizes the group of internet users that will be scored against the parameters selected in the positive segment
cClone Mode
Clusters Only
No Socio-demo behavior
Versioned profile
profile that already exist
Mini bucket
Volume of cookies to create scoring tree,
Algorithm parameters
he depth of the scoring tree, i.e. the branches of the tree that will highlight the best explanatory variables for a score
Data TYPE
1st party data
My Data, My Media data
My Data (1st party data)
data from advertiser’s website and CRM databases applying AND, OR, EXCLUSION rules on the target parameters
My Media (1st party data)
data from advertiser’s previous campaigns Combine various data sources to create an audience segment,
My Audiences (1st party AND/OR 3rd party data)
Saved audiences composed of C-clones, 1st party and/or 3rd party data
3rd party data
Composed of Demographic, Behavioral, Geography, Technology
Behavioral (3rd party data)
Weborama’s data with segments & clusters on Interest profile
This data set is divided into 2 criteria: Segments and Clusters
1- Segments: 23 segments that aggregate several clusters
2- Clusters: 160+ centers of interests. Each cluster is linked to one single segment
Example: The “Clothing, shoes and accessories” segment is composed of 7 clusters: accessories, clothing, eyewear, fashion trend, footwear, jewelry, lingerie
Demographic (3rd party data)
Weborama’s data with segments & clusters on Socio-demographic profile
Geography (3rd party data)
enables to select the geographic criteria to build an audience
This data set is divided into pre-defined administrative groupings according to the country, e.g. Regions and Departments for France
Regions: regroup the 27 administrative regions in France
Departments: regroup all the departments linked to a region
Technology (3rd party data)
enables the user to select the technologies criteria to build an audience
This data set is divide into pre-defined groupings according to User Agent information and Digital Elements (for Internet Service Providers)
1- Browsers = IE, Firefox, Chrome, Safari, Opera, etc.
2- Devices = Desktop, Mobile, Tablet, Unknown
3- Operating Systems = IOS, Android, Blackberry, MacOS, Windows, Symbian etc …
4- Internet Service Providers = depending of the country
Boolean engine
Combine various data sources to create an audience segment, applying AND, OR, EXCLUSION rules on the target parameters
Bootstrap
Retrieve data on defined previous period (Recency 1, 3, 5, 10, 15, 30)
Search in our DB users matching the audience and attribute them the audience
Push the stock
Push users from audience to Partners
Frequency (FEATURE)
- Unique frequency : The number of times a unique user was exposed to an ad.
- Daily unique frequency : The average number of times a daily unique user was exposed to an ad.
Recency
Calculated in real time, Volume on previous N Days.
recency 1, 2, 3, 5, 7, 14, 21, 30 days.
Quantile
Level of user’s interest in a segment from 1 to 20
Surf intensity
Level of user’s internet navigation from 1 to 20