Documentation
Academy
Join the Academy
Benefit from guided learning opportunities →
Quick Starts
Learning Paths
New Features
Certifications
Academy Discussions
Community
Explore the Community
Discover, share, and contribute →
Learn About Us
Ask A Question
What's New?
Discuss Dataiku
Using Dataiku
Setup And Configuration
General Discussion
Plugins & Extending Dataiku
Product Ideas
Programs
Frontrunner Awards
Dataiku Neurons
Community Resources
Community Feedback
User Research
Documentation
Reference Documentation
Comprehensive specifications of Dataiku →
User's Guide
Specific Data Processing
Automation & Deployment
APIs
Installation & Administration
Other Topics
Knowledge
Knowledge Base
Articles and tutorials on Dataiku features →
User Guide
Admin Guide
Dataiku Solutions
Dataiku Cloud
Developer
Developer Guide
Tutorials and articles for developers and coder users →
Getting Started
Concepts and Examples
Tutorials
API Reference
User's Guide
DSS concepts
Connecting to data
Exploring your data
Schemas, storage types and meanings
Data preparation
Charts
Interactive statistics
Machine learning
Prediction (Supervised ML)
Clustering (Unsupervised ML)
Automated machine learning
Model Settings Reusability
Features handling
Algorithms reference
Advanced models optimization
Models ensembling
Model Document Generator
Time Series Forecasting
Causal Prediction
Introduction
Causal Prediction Settings
Causal Prediction Algorithms
Causal Prediction Results
Scoring recipe
Evaluation recipe
Deep Learning
Models lifecycle
Scoring engines
Writing custom models
Exporting models
Partitioned Models
ML Diagnostics
Computer vision
Labeling
The Flow
Visual recipes
Recipes based on code
Code notebooks
MLOps
Webapps
Code Studios
Code reports
Dashboards
Workspaces
Data Catalog
Dataiku Applications
Working with partitions
DSS and SQL
DSS and Python
DSS and R
DSS and Spark
Code environments
Collaboration
Specific Data Processing
Time Series
Geographic data
Generative AI and LLM Mesh
Text & Natural Language Processing
Images
Audio
Video
Automation & Deployment
Metrics, checks and Data Quality
Automation scenarios
Production deployments and bundles
API Node & API Deployer: Real-time APIs
Governance
APIs
Python APIs
R API
Public REST API
Additional APIs
Installation & Administration
Installing and setting up
Elastic AI computation
DSS in the cloud
DSS and Hadoop
Metastore catalog
Operating DSS
Security
User Isolation
Other topics
Plugins
Streaming data
Formula language
Custom variables expansion
Sampling methods
Accessibility
Troubleshooting
Release notes
Other Documentation
Third-party acknowledgements
Dataiku DSS
You are viewing the documentation for version
13
of DSS.
»
Machine learning
»
Causal Prediction
Open page in a new tab
Causal Prediction
¶
Introduction
Prerequisites and limitations
Train a causal prediction model
Causal Prediction Settings
Settings: Outcome & Treatment
Settings: Train / Test set
Settings: Metrics
Settings: Algorithms
Settings: Hyperparameters optimization
Settings: Treatment Analysis
Causal Prediction Algorithms
Meta-learning
Causal forest
Causal Prediction Results
Feature importance
Uplift and Qini curves
Distribution of the predicted effect
Treatment Randomization
Positivity Analysis
Scoring recipe
Causal scoring
Propensity scoring
Evaluation recipe
Input dataset
Output datasets