Advertisement · 728 × 90

Posts by Elena Zheleva

Post image Post image

It’s a treat going from SDM 2025 to CLeaR 2025 and seeing two excellent keynotes at the intersection of social systems and #causal modeling. @jugander.bsky.social on interrupting misinformation with community notes and @bleilab.bsky.social on hierarchical causal models.

11 months ago 3 0 0 1

Thoroughly enjoyed participating in and presenting at the 2025 Data Science (Academic) Leadership Summit, learning more about the data science and AI landscape across universities, and feeling inspired by the enriching interactions. Many thanks to the organizers!

1 year ago 1 0 0 0
Research poster, student, presentation

Research poster, student, presentation

If you are at #aaai2025, come by our poster on “Learning Exposure Mapping Functions for Peer Effect Estimation” at the AAAI Workshop on AI with Causal Techniques, presented by my PhD student Shishir Adhikari, to learn how we automatically account for different counterfactual ego network structures.

1 year ago 2 0 0 0
Post image Post image

@rebeccasaxe.bsky.social giving an informative and thought-provoking talk on theory of mind at the #aaai2025 workshop on Advancing Artificial Intelligence through Theory of Mind (ToM4AI).

1 year ago 3 0 0 0

Looking forward to attending AAAI this week. Will any of you be there?

1 year ago 0 0 0 0
Post image

Unleashing the Power of Randomization in Auditing Differentially Private ML” by
Krishna Pillutla making connections to graphs and distributional robustness at GraPFiCs workshop at UCSC’s Seymour Center.

2 years ago 2 0 0 0
Post image Post image

Day 2 of the GraPFiCs workshop starting w/ Kristen Altenburger‘s talk on Graphs for Product Innovation: Explanation vs. Prediction Problems tying nicely causality, fairness, privacy and graphs along the explanation vs. prediction spectrum of modeling.

sites.google.com/view/grapfic...

2 years ago 2 0 1 0
Post image

An exciting lineup of speakers at the workshop on Foundations of Fairness, Privacy and Causality in Graphs!

sites.google.com/view/grapfic...

2 years ago 3 0 0 0
Advertisement

I was a AAAS S&TP Fellow as well 2016-17 😃 What cohort were you in?

2 years ago 0 0 1 0
Preview
AAAS Launches STPF Rapid Response Cohort in AI to Support Policy Development in Congress | American ... The AI cohort is comprised of six scientists who will serve as expert staff in a congressional office or committee with most starting their yearlong placements this week to provide guidance on pressin...

I can't help but notice that most of the AAAS S&TP Fellows in AI are women 💪. Watch Kiri Wagstaff, Serena Booth, Cynthia Lee, Rebecca Voglewede, and Soribel Feliz, as they help Congress navigate the complex connections between AI and policy.

2 years ago 1 0 0 1

One of my favorite things about being in academia is learning from students and being inspired by their curiosity and ideas. #gradingprojectproposals

2 years ago 2 0 0 0
HDSI Postdoctoral Fellowship Program The 2024-2025 application is now open, please use this link to apply! Overview of the Fellowship Program The Harvard Data Science Initiative (HDSI) is seeking applications for its flagship Harvard Dat...

The Harvard Data Science Initiative has launched its application for the 2024–2025 Postdoctoral Fellowship. Share with anyone who is a good fit; and have them reach out if their interest aligns with mine (e.g., causal inference, fairness, model validation, anomaly detection, GenAI, etc.).

2 years ago 9 7 1 0

Thanks for the new follows! I don’t know many of you 😳 Feel free to say ‘hi’ here and tell me a bit about your work 😊

2 years ago 1 0 0 0
Preview
Data-Driven Estimation of Heterogeneous Treatment Effects Estimating how a treatment affects different individuals, known as heterogeneous treatment effect estimation, is an important problem in empirical sciences. In the last few years, there has been a...

How far can we go in estimating heterogeneous treatment effects when the causal model is unknown a priori? Check out our survey paper on "Data-driven estimation of heterogeneous treatment effects": arxiv.org/abs/2301.06615.

2 years ago 0 0 0 0

I am teaching a seminar course on Causal Inference and Learning again this semester. I change the paper selection every year and sometimes repeat some. Last year, I focused mostly on causal inference with interference. You can see the list of papers we discussed here: www.cs.uic.edu/~elena/cours...

2 years ago 5 3 0 0

The sky is always bluer on the other side.

2 years ago 4 0 0 0