R Package for Simultaneous Multi-Bias Analysis
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Updated
May 22, 2024 - R
R Package for Simultaneous Multi-Bias Analysis
This repository serves as a research archive for the mini-project "Comparison of Gaussian graphical models (GGM) and Directed Cyclic Graph (DCG) Models as Causal Discovery Tools"
Perform causality Inference on breast cancer data set using Judea Pearl and his research groups framework
R Code for graphical causal models including some undirected one. Models include LiNGAM, LOFS, Patel's tau, graphical lasso, and PC algorithm.
Implementation of "Marc F. Bellemare and Jeffrey R. Bloem: The Paper of How: Estimating Treatment Effects Using the Front-Door Criterion. March 4, 2020"
Work done for University of Pittsburgh course "Principles of Data Science" (STAT 1261) with Dr. Junshu Bao in Fall semester of 2018.
Working with the causaleffects and igraph
Political Data Science Project: Environmental Impact Evaluation of Bicycle Sharing (Grade: 20/20)
Source code for the ML models used in experiments with CA-CNN architecture.
This repository is designed to document and explain in-detailed analysis of data, from concepts like mining or transforming to predictive analytics.
Generating images of minority groups using latent SCM model in the Bidirectional Generative Model.
A structure for representing possible states of a causal entity (such as plot, generalized character personality, aspects of natural language typological structure, etc.) taking into account the probabilities of facts
ESA-2SCM for Causal Discovery: Causal Modeling with Elastic Segmentation-based Synthetic Instrumental Variable
Comparing effectiveness of the most common causal machine learning methods across various treatment effect, model complexities, data dimensions and sample sizes.
Estimation of Causal structural model using Housing Price and Housing Credit
scmopy: Distribution-Agnostic Structural Causal Models Optimization in Python
This is the implementation of low rank adaptation (LoRA) which is a subset of parameter efficient fine tuning (PEFT).
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