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@IQSS @AIandGlobalDevelopmentLab

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cjerzak/README.md

Bio | Papers {Substantive, Methodological} | Visualizations | Students

Bio

Present:
[1.] Assistant Professor in the Department of Government at the University of Texas at Austin.
[2.] Consultant, Institute for Health Metrics & Evaluation (IHME), University of Washington.

Past:
[1.] Visiting Assistant Professor in the Department of Government at Harvard University (2024).
[2.] Postdoc, AI & Global Development Lab (2021-2022).

Methodological research: AI and global development, earth observation data for causal inference, adversarial dynamics, computational text analysis.

Substantive research: Political economy, social movements, descriptive representation.

[CV] [Homepage] [.bib]

[Team] [Students]

[PlanetaryCausalInference.org]

[AI & Global Development Lab GitHub]

[Google Scholar] [UT Profile]

[YouTube Tutorials] [Data Assets]

Past and Present Student Co-authors or Advisees on GitHub

Cindy Conlin Andrés Cruz
Cem Mert Dallı Beniamino Green
SayedMorteza Malaekeh Nicolas Audinet de Pieuchon
Kazuki Sakamoto Ritwik Vashistha
Fucheng Warren Zhu

Papers & Code

Methodological

[Encoding Multi-level Dynamics in Effect Heterogeneity Estimation] [Video] [.bib]* GitHub Repo stars

[Effect Heterogeneity with Earth Observation in Randomized Controlled Trials: Exploring the Role of Data, Model, and Evaluation Metric Choice] [.bib]*

[A Scoping Review of Earth Observation and Machine Learning for Causal Inference: Implications for the Geography of Poverty] [.bib] [Data]* GitHub Repo stars

[Image De-confounding] [.bib] [Code] GitHub Repo stars

[Can Large Language Models (or Humans) Disentangle Text Features?] [.bib] [Code]* GitHub Repo stars

[Image-based Treatment Effect Heterogeneity] [.bib] [Code] GitHub Repo stars

[Non-parametric Content Analysis] [.bib] [Code] GitHub Repo stars

[Linking Datasets on Organizations Using Half A Billion Open Collaborated Records] [.bib] [Code] GitHub Repo stars

[Degrees of Randomness in Rerandomization Procedures] [.bib] [Code] GitHub Repo stars

Substantive

[Where Minorities are the Majority: Electoral Rules and Ethnic Representation] [.bib]

[The Composition of Descriptive Representation] [.bib] [Code] GitHub Repo stars

[Housing Values and Partisanship: Evidence from E-ZPass] [.bib]

*indicates joint work with graduate student co-author(s). See [Students] for more information.

Visualizations

Video Title

Pinned Loading

  1. iqss-research/readme-software iqss-research/readme-software Public

    Readme2: An R Package for Improved Automated Nonparametric Content Analysis for Social Science

    R 43 10

  2. causalimages-software causalimages-software Public

    causalimages: An R package for performing causal inference with image and image sequence data

    R 16 3

  3. LinkOrgs-software LinkOrgs-software Public

    LinkOrgs: An R package for linking linking records on organizations using half a billion open-collaborated records from LinkedIn

    R 11 1

  4. AIandGlobalDevelopmentLab/eo-poverty-review AIandGlobalDevelopmentLab/eo-poverty-review Public

    Directory of papers on Earth Observation (EO), Machine Learning (ML), and Causal Inference (CI)

    TeX 7

  5. DescriptiveRepresentationCalculator-software DescriptiveRepresentationCalculator-software Public

    DescriptiveRepresentationCalculator: An R package for quantifying observed and expected descriptive representation

    R 6

  6. fastrerandomize-software fastrerandomize-software Public

    FastRerandomize: An R Package for Ultra-fast Rerandomization Using Accelerated Computing

    R 6