Skip to main content

Breadcrumb

Home arrow_forward_ios Resource Library Search arrow_forward_ios What is Design-Based Causal Inferen ...
Home arrow_forward_ios ... arrow_forward_ios What is Design-Based Causal Inferen ...
Resource Library Search
Report Technical Methods Report

What is Design-Based Causal Inference for RCTs and Why Should I Use It?

NCEE
Author(s):
Peter Z. Schochet: Mathematica Policy Research, Inc
Publication date:
July 2017
Publication number:
NCEE 20174025

Summary

Design-based methods have recently been developed as a way to analyze data from impact evaluations of interventions, programs, and policies. The approach uses the building blocks of experimental designs to develop impact estimators with minimal assumptions. The methods apply to randomized controlled trials and quasi-experimental designs with treatment and comparison groups. Although the fundamental concepts that underlie design-based methods are straightforward, the literature on these methods is technical, with detailed mathematical proofs required to formalize the theory. This brief aims to broaden knowledge of design-based methods by describing their key concepts and how they compare to traditional model-based methods, such as such as hierarchical linear modeling (HLM). Using simple mathematical notation, the brief is geared toward researchers with a good knowledge of evaluation designs and HLM.

Download, view, and print

Technical Methods Report
NCEE

What is Design-Based Causal Inference for RCTs and Why Should I Use It?

By: Peter Z. Schochet: Mathematica Policy Research, Inc
Download and view this document

Share

Icon to link to Facebook social media siteIcon to link to X social media siteIcon to link to LinkedIn social media siteIcon to copy link value
icon-dot-govicon-https icon-quote