Weighting & Propensity scores

Mrs. Young | July 17, 2025

This method also belongs to Adjusted methods (Backdoor C.).

Table of Contents

  1. Description & principle
  2. Reference articles
  3. Packages
  4. Assessment table

Description & principle

A clear, technical yet accessible explanation of the method, its core principle(s).

Major variants

optional

If the method has variants that seem important, either already widespread or promising and well documented.

Further online resources

References to useful online resources to get started, e.g. explanation blogs

Reference articles

Method

  • One or a few key academic references that introduce or formalize the method.

Research applications

With RS data in Ecology / Biodiversity

  • A

Without RS data (Ecology domain)

optional

  • B

Packages

Python

R

Code Cells

optional

Assessment table

CategoryCriteriaAssessment
OutcomeObjectiveEffect estimation, Detection
 EstimandATE, ATT, CATE
 ValidityVarying
Data compatibilityTypeSpatial only (cross-sectional), Panel data (many samples)
 Required TS lengthHandles ≤ 10
 Handles few samples10 to 100
 Handles huge datasets (n)Yes
 Handles missing dataNo: requires prelim. correction
 RS-data provenYes
AssumptionsFunctional formNon-linear
 No unobserved confoundersRequired
 No interferenceRequired
 Well-defined treatmentsRequired
 Common support (positivity)Required
 Causal Markov ConditionRecommended
 FaithfulnessRecommended
 IDDRequired
 Model specific assumptionGood covariate balance
Model propertiesRequires explicit processesAgnostic
 Exposure typeBinary, Categorical, Continuous / Time-varying, Compositional, Multivariate
 Number of variablesMultivariate, High-dimensional (p≫n)
 Handles lag effectsPossible
 Propagates uncertaintyNeeds model-agnostic propagation
 Parametric natureParametric
PackagesLanguageR, Python, Others
 UsageUser-friendly, Technical but well documented

References