Research Brain Cohort Behaviour Framework

Document Type: Framework
Status: Active
Version: v1.0
Authority: MWMS HeadOffice
Parent: Research Brain Canon
Last Reviewed: 2026-04-12


Purpose

The Research Brain Cohort Behaviour Framework defines how MWMS analyzes grouped customer behaviour over time in order to understand retention patterns, revenue durability, and growth stability.

Individual customer behaviour is volatile.

Grouped behavioural patterns are stable.

Cohorts allow MWMS to:

detect retention decay patterns
evaluate acquisition quality
identify lifecycle optimisation opportunities
detect revenue durability signals
improve forecasting accuracy
identify structural growth constraints

Cohort analysis converts raw behaviour into structural insight.

Structural insight improves strategic decisions.


Scope

This framework governs:

cohort grouping logic
behavioural trend interpretation
cohort comparison logic
retention decay interpretation
cohort-based performance evaluation
cohort quality assessment

Applies to:

acquisition cohorts
product cohorts
behavioural cohorts
lifecycle cohorts
channel cohorts
promotion cohorts

Does not govern:

analytics tool configuration
reporting dashboards
statistical modelling implementation

These are governed by Tech Stack Canon.


Core Principle

Customers acquired under similar conditions often exhibit similar behavioural patterns.

Patterns emerge when behaviour is observed over time.

Time-based behavioural analysis reveals:

retention structure
repeat purchase timing
lifecycle leverage opportunities

Stable growth depends on stable cohort performance.


Cohort Definition Structure

A cohort is a group of customers sharing a common starting condition.

Common cohort definitions include:

acquisition date cohort
acquisition channel cohort
first product purchased cohort
promotion exposure cohort
geographic cohort
price sensitivity cohort

Grouping logic should reflect meaningful behavioural distinctions.


Time-Based Behaviour Analysis

Cohorts are analysed across time intervals.

Common interval structures:

days since first purchase
weeks since acquisition
months since first purchase

Time structure allows detection of behavioural decay curves.

Decay curves reveal:

retention durability
engagement persistence
purchase frequency decline

Cohort curves visualise revenue sustainability.


Retention Curve Logic

Retention curves illustrate probability of repeat behaviour across time.

Typical pattern:

strong initial activity
rapid early decay
stabilisation phase
long-tail repeat behaviour

Understanding retention curves allows MWMS to:

identify intervention timing opportunities
detect structural lifecycle weaknesses
evaluate acquisition quality differences

Retention strength influences LTV stability.


Second Purchase Sensitivity Principle

Second purchase behaviour represents a critical transition point.

customers who reach second purchase demonstrate:

higher lifetime value probability
stronger brand affinity formation
higher engagement persistence

second purchase probability is often the largest behavioural drop-off point.

improving second purchase rate significantly improves cohort value.

cohort analysis highlights second purchase friction patterns.


Cohort Quality Differentiation

Different acquisition sources produce different cohort quality profiles.

example differences:

high volume channel with weak retention
low volume channel with strong retention

channel evaluation must consider cohort quality, not only acquisition volume.

revenue source does not always equal highest value customer source.

behaviour reveals true acquisition quality.


Behaviour Pattern Identification

Cohorts reveal structural behavioural differences.

examples:

first product purchased influences repeat purchase probability
acquisition promotion influences price sensitivity patterns
acquisition channel influences retention durability
seasonal acquisition timing influences repeat purchase timing

pattern extraction improves targeting decisions.

pattern extraction improves merchandising decisions.

pattern extraction improves lifecycle strategy decisions.


Relationship to LTV Signal Framework

cohort behaviour provides empirical input for LTV estimation.

repeat purchase frequency influences expected value trajectory.

cohort decay patterns influence revenue forecasting reliability.

stable cohorts produce predictable LTV curves.

unstable cohorts increase forecasting uncertainty.


Relationship to Forecasting Framework

forecasting accuracy depends on cohort stability.

revenue projections require understanding of:

repeat purchase probability
cohort decay rate
reactivation probability

cohort modelling improves forecast confidence intervals.

cohort structure reduces projection volatility.


Relationship to Lifecycle Framework

cohort analysis identifies lifecycle leverage points.

example leverage points:

early lifecycle onboarding optimisation
second purchase acceleration strategies
reactivation timing optimisation

cohort behaviour identifies highest impact lifecycle interventions.


Relationship to Segmentation Framework

cohort behaviour informs segmentation logic refinement.

example:

high retention cohort characteristics can be used to identify similar prospects.

segments derived from high quality cohorts improve targeting precision.

cohort insights improve audience modelling.


Cohort Comparison Logic

cohorts should be compared across consistent time intervals.

example comparisons:

month 0 behaviour across acquisition channels
month 3 retention across campaigns
month 6 revenue across product entry points

consistent comparison enables detection of structural differences.

structural differences inform optimisation priorities.


Drift Protection

system must prevent:

evaluating acquisition performance using only immediate revenue
ignoring long-term retention behaviour
assuming uniform customer quality across channels
interpreting short-term performance as long-term stability
ignoring cohort decay signals

cohort evaluation must consider longitudinal behaviour.

short-term performance does not guarantee long-term value.


Architectural Intent

Research Brain Cohort Behaviour Framework enables MWMS to evaluate growth durability through structured observation of behavioural patterns across time.

cohorts transform behavioural volatility into interpretable structure.

interpretable structure improves strategic stability.

stable strategy improves long-term performance.


Future Expansion

predictive cohort modelling
probabilistic retention curves
adaptive lifecycle sequencing
dynamic LTV estimation models
cohort-based CAC optimisation
churn probability modelling

future models improve prediction precision.


Final Rule

Individual behaviour is noisy.

Grouped behaviour reveals structure.

MWMS prioritises structural insight over isolated observation.


Change Log

Version: v1.0
Date: 2026-04-12
Author: MWMS HeadOffice

Change: Initial creation of Research Brain Cohort Behaviour Framework defining cohort grouping logic, retention curve interpretation, lifecycle leverage identification structure, and forecasting input relationships.


CHANGE IMPACT

Pages Created:

Research Brain Cohort Behaviour Framework

Pages Updated:

None

Pages Deprecated:

None

Registries Requiring Update:

MWMS Architecture Registry
MWMS Brain Registry
MWMS Intelligence Layer Map
MWMS Canon Hierarchy Map

Canon Version Update Required: No
Change Log Entry Required: Yes