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Experiments

Experiments were previously called Splits.

Experiments is only available on Business tier plans.
AudienceMarketers and analysts who want to compare performance across randomized test and control groups.
Prerequisites
  • Created Audience Experiments in Customer Studio
  • Audience synced at least once after experiments were created
  • Event data (such as purchases or clicks) available for measurement

Experiments help you evaluate how different marketing strategies perform by analyzing outcomes across randomized experiment groups. You can measure lift, compare treatment and holdout results, and understand whether your campaigns drive meaningful changes in user behavior.


Learning objectives

After reading this article, you’ll know how to:


Overview

Experiments provide a measurement layer for Audience Experiments.

Whenever you create an Audience Experiment in Customer Studio, Hightouch automatically generates a corresponding Experiment so you can track performance across randomized groups.

Experiments allow you to:

  • Compare holdout vs. treatment outcomes
  • Analyze lift and confidence intervals
  • Visualize performance over time
  • Evaluate strategies continuously
FeatureDescription
Experiment resultsDisplays lift, performance trends, and confidence intervals
ConfigurationControls metrics, measurement windows, and start dates
NormalizationEnables per-member or baseline-scaled comparisons

Experiment measurement charts have been updated. All experiment reporting now lives in IntelligenceExperiments.


How Experiments are created

Experiments are automatically managed based on Audience Experiments in Customer Studio:

  • Creating an Audience Experiment automatically creates a corresponding Experiment.
  • Disabling or deleting an Audience Experiment removes its Experiment.
  • Restoring an Audience Experiment restores its Experiment.

This ensures measurement stays aligned with the audiences you're actively using.


Setup and requirements

1. Create Audience Experiments

Before measuring experiment results:

  1. Create Audience Experiments in Customer Studio.
  2. Ensure the audience has synced at least once after the experiment groups were created.
  3. Confirm that users generate measurable events (such as purchases, page views, or clicks).

For every Audience Experiment created in Customer Studio, Hightouch automatically creates a corresponding Experiment in IntelligenceExperiments. Deleting or restoring an Audience Experiment removes or restores the linked Experiment.


Measure results

The Experiments section of Intelligence helps you compare outcomes between experiment groups and evaluate the impact of your campaigns.

Navigate to: IntelligenceExperiments

Intelligence navigation menu


1. View list of Experiments

The Experiments list shows all Experiments, their statuses, and recent updates.

Statuses include:

  • Draft: Missing one or both required configuration elements (primary metric or start date).
  • Scheduled: Fully configured; the start date is in the future.
  • Running: Fully configured; the start date is today or in the past.

Experiments list


2. Configure an experiment

Open an experiment and select the Configuration tab.

From here, you can:

  • Choose a primary metric (required) and optional secondary metrics (e.g., Conversions, Revenue).
  • Set a Start date
    • Determines when measurement begins.
    • Does not apply retroactively.
    • Does not affect sync or activation behavior.
  • Choose a Measurement window
    • Example: Entry → 30 days after entry measures events from the moment the user enters the audience to 30 days later.

Experiment configuration


3. Interpret results

The Overview tab displays experiment outcomes and performance trends.

Experiment results chart

Key elements:

  • Lift %: Percentage difference between treatment and holdout group performance.
  • Lift interval bar:
    • Green: Significant positive lift
    • Red: Significant negative lift
    • Gray: Not statistically significant (interval overlaps 0%)
  • Performance lines:
    • Solid lines show performance over time
    • Shaded regions represent 95% confidence intervals

Lift intervals use a Bayesian method, enabling continuous monitoring without needing to wait for an experiment to complete.


4. Normalize results

Use the Normalization dropdown to switch perspectives:

  • Per member (default): Average performance per user
  • Normalized to baseline group: Scales performance to compare groups evenly

Hover over the lift card to view raw totals.

Normalization toggle

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Last updated: Nov 21, 2025

On this page
  • Learning objectives
  • Overview
  • How Experiments are created
  • Setup and requirements
  • 1. Create Audience Experiments
  • Measure results
  • 1. View list of Experiments
  • 2. Configure an experiment
  • 3. Interpret results
  • 4. Normalize results

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