RedCrow9564 / EstimationOverGroups-FinalProject

This project was submitted as a requirement for this course. The course was administered in Spring 2020 in Tel-Aviv University - School of Mathematical Sciences

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Estimation and Approximation Problems Over Groups (0372-4013) - Final Project

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This is a project submitted as a requirement for this course. The course was administered in Spring 2020 in Tel-Aviv University - School of Mathematical Sciences, and taught by Dr. Nir Sharon. This project is a reconstruction of experiments of [1] for an algorithm for the Multi-Reference Factor Analysis problem.

Getting Started

The code can be fetched from this repo. The Jupyter Notebook version does the same work, and can be deployed to Google Colab. While the the notebook version can be used immediately, this code has some prerequisites. Any questions about this project may be sent by mail to 'eladeatah' at mail.tau.ac.il (replace 'at' by @).

Prerequisites

This code was developed for Windows10 OS and tested using the following Python 3.7 dependencies. These dependencies are listed in requirements.txt. All these packages can be installed using the 'pip' package manager (when the command window is in the main directory where requirements.txt is located):

pip install -r requirements.txt

All the packages, except for Sacred, are available as well using 'conda' package manager. It is highly-recommended that the CVXPY library is installed using the 'conda' package manager, and not 'pip'.

Running the Unit-Tests

The Unit-Test files are:

Running any of these tests can be performed by:

<python_path> -m unittest <test_file_path>

Acknowledgments

Credits for the original algorithms, paper and results of [1] belong to its respectful authors: Prof. Yoel Shkolnisky and Boris Landa.

License

This project is licensed under the MIT License - see the LICENSE file for details

References

[1] B. Landa, Y. Shkolnisky. Multi-reference factor analysis: low-rank covariance estimation under unknown translations (arXiv: 2019, expected 2020-2021).

About

This project was submitted as a requirement for this course. The course was administered in Spring 2020 in Tel-Aviv University - School of Mathematical Sciences

License:MIT License


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