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VAE-Transformer based HPO Model

This repo is derived from HPO-B repo to evaluate the newly proposed generative based black-box HPO algorithm on their benchmark meta-dataset to assess the performance of the proposed VAE-Transformer model.

Downloads

  1. HPO-B Dataset: The HPO-B Paper discusses various search spaces across different datasets. You can download the dataset from here.

  2. Surrogates for Continuous Search Spaces: The model is evaluated on continuous search spaces. Download the necessary surrogate models from here.

Steps to run the project

  1. Prepare the Folders:

    • Extract the dowloaded files and place the folders in the root directory of the project.
  2. Run VAET Example:

    • Execute the VAET example script with the following command:
      python example_vaet.py
      
    • This will create a results/VAET.json file containing accuracy results for different seeds on all datasets of search-space id 5971.
  3. Run VAET Benchmark:

    • To generate benchmark comparisons, use this command:
      python examplevaet_benchmark.py
      
    • This script generates plots of rank regret, comparing the performance of the proposed generative-based black-box algorithm against methods like Random Search, Gaussian Process, and Deep Gaussian Process.

Results

Result Plot

References