Source code "Unsupervised Model Personalization while Preserving Privacy and Scalability: An Open Problem." @ CVPR2020
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Updated
Dec 8, 2022 - Python
Source code "Unsupervised Model Personalization while Preserving Privacy and Scalability: An Open Problem." @ CVPR2020
This project demonstrates the use of generic bi-directional LSTM models for predicting importance of words in a spoken dialgoue for understanding its meaning. The model operates on human-annotated corpus of word importance for its training and evaluation. The corpus can be downloaded from: http://latlab.ist.rit.edu/lrec2018
Workflow to generate interactive html feature selection report for longitudinal and cross-sectional studies
Thesis titled "Geospatial Semantic Pattern Recognition in Volunteered Geographic Data Using the Random forest Algorithm" for the degree of Masters of Spatial Analysis at Ryerson University in 2016
This repository contains the implementation of ITErpretability, a new framework to benchmark treatment effect deep neural network estimators with interpretability. For more details, please read our NeurIPS 2022 paper: 'Benchmarking Heterogeneous Treatment Effect Models through the Lens of Interpretability'.
Code for Master Thesis
Companion code for walkthrough: http://amunategui.github.io/variable-importance-shuffler/
An implementation of a decision tree classifier to predict the most present age in each urban area in the data set.
Scraping Rotten Tomatoes to Uncover Hidden Trends
Artifact importance value calculator for Genshin Impact
Python module to calculate local variable importance with the global model
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