Experimentation Brain Loop KPI Mapping Framework

Document Type: Framework
Status: Active
Authority: Experimentation Brain
Applies To: Affiliate Brain, Ads Brain, Conversion Brain, Research Brain, Content Brain, AIBS Brain
Parent: Experimentation Brain Canon
Version: v1.0
Last Reviewed: 2026-04-18


Purpose

The Experimentation Brain Loop KPI Mapping Framework defines how MWMS measures performance across growth loops.

Growth loops generate compounding impact.

However, loops can only be optimised when each stage of the loop is measurable.

This framework ensures loop performance can be diagnosed and improved through structured measurement.

Without loop-level KPIs:

constraints cannot be identified
experiments cannot be prioritised
growth mechanisms cannot be improved
loop effectiveness cannot be validated

This framework enables MWMS to transform abstract growth models into measurable systems.


Scope

This framework applies to:

Affiliate Brain growth loops
Ads Brain optimisation loops
Conversion Brain behaviour loops
Content Brain authority loops
Research Brain insight loops
AIBS Brain product loops

This framework governs:

loop stage measurement logic
conversion step KPI definition
loop bottleneck identification
loop optimisation prioritisation

This framework does not govern:

individual experiment design
traffic allocation decisions
creative strategy choices

These remain governed by Brain-level experimentation frameworks.


Definition

A Growth Loop is a reinforcing system where output from one cycle contributes to future input.

Loops create compounding growth effects.

Example loop:

user acquisition → user value → user sharing → new users → repeat cycle

Each stage within the loop influences total loop performance.

Loop optimisation requires measurement of transitions between stages.


Core Loop Structure

MWMS uses a four-stage loop structure:

Trigger
Action
Value Experience
Reinforcement

These stages allow structured KPI assignment.


Stage 1 — Trigger

A trigger initiates user movement into the loop.

Triggers may include:

advert exposure
search discovery
email prompt
referral recommendation
notification
content discovery

Trigger effectiveness influences entry volume into loop.

Example KPIs:

click-through rate
open rate
impression-to-click ratio
traffic volume
engagement initiation rate


Stage 2 — Action

Action represents the behaviour taken by the user after trigger exposure.

Examples:

clicking advertisement
opening landing page
starting trial
signing up
watching video
reading content

Action effectiveness influences loop continuation probability.

Example KPIs:

landing page engagement rate
signup rate
video completion rate
page interaction depth
initial conversion rate


Stage 3 — Value Experience

Value experience represents successful delivery of perceived benefit.

User must recognise value in order to continue loop progression.

Examples:

product usefulness
information satisfaction
problem resolution
entertainment value
perceived advantage

Value experience strongly influences retention probability.

Example KPIs:

return visit rate
time on platform
product usage frequency
engagement depth
repeat interaction frequency


Stage 4 — Reinforcement

Reinforcement creates loop continuation or expansion.

User contributes new input into loop.

Examples:

referral sharing
repeat purchase
content sharing
email subscription continuation
community participation

Reinforcement determines loop strength.

Example KPIs:

referral rate
repeat purchase frequency
subscription renewal rate
content sharing frequency
community participation rate


Loop Conversion Mapping

Each transition between loop stages has a measurable conversion rate.

Example:

Trigger → Action conversion rate

Action → Value conversion rate

Value → Reinforcement conversion rate

Weak transitions indicate optimisation opportunity.


Loop Bottleneck Identification

Loop bottlenecks occur when one stage significantly underperforms relative to others.

Example:

strong traffic volume
low activation rate

indicates constraint in Action stage.

Example:

strong usage
low referral behaviour

indicates constraint in Reinforcement stage.

Bottleneck identification informs Growth Lever selection.


Loop Measurement Granularity

Loops may be measured at different levels:

macro loop level
micro step level

Example macro loop:

acquisition → retention → referral

Example micro loop:

ad click → page view → scroll depth → CTA click → purchase

Granularity selection depends on:

traffic volume
data availability
optimisation priority


Loop Measurement Limitations

Some loop stages may not be directly measurable.

Example:

word-of-mouth referrals
offline sharing
private sharing environments

Proxy metrics may be used when direct measurement is unavailable.

Example:

survey responses
traffic source inference
post-purchase attribution surveys


Relationship to Growth Model Architecture

Growth Model Architecture identifies loop structures.

Loop KPI Mapping Framework defines how loops are measured.

Together they enable structured optimisation.


Relationship to Growth Lever Framework

Growth Levers often correspond to weak loop stages.

Example:

increase referral participation rate

increase onboarding completion rate

increase repeat purchase frequency

Loop measurement identifies leverage opportunities.


Governance Rule

Loops must have defined measurable KPIs before optimisation begins.

Unmeasured loops cannot be systematically improved.

Loop assumptions must be validated through observable signals where possible.


Version Control

v1.0
Initial definition of loop KPI mapping structure within Experimentation Brain.