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Learning Inductive Biases with Simple Neural Networks

Code for the paper "Learning Inductive Biases with Simple Neural Networks" (Feinman & Lake, 2018).

Requirements & Setup

This code repository requires Keras and TensorFlow. Keras must be configured to use TensorFlow backend. A full list of requirements can be found in requirements.txt. After cloning this repository, it is recommended that you add the path to the repository to your PYTHONPATH environment variable to enable imports from any folder:

export PYTHONPATH="/path/to/learning-to-learn:$PYTHONPATH"

Repository Structure

The repository contains 5 subfolders:

1. learning2learn

This folder contains the core reusable source code for the project.

2. scripts

This folder contains short Python scripts for running some experiments. Here you will find scripts for training a neural network model and evaluating its performance.

3. notebooks

This folder contains a collection of Jupyter Notebooks for various small tasks, such as plotting results and performing parametric sensitivity tests.

4. data

This is a placeholder folder for image and model data. The Brodatz texture dataset is stored here.

5. results

This is where experiment results will be saved to and loaded from.

Running the Experiments

Experiment 1

To train the MLP of Experiment 1 on all dataset sizes, i.e. all pairs of {# categories, # examples}, run the following command using mlp_loop.py from the scripts folder:

python mlp_loop.py -ep=200 -r=10 -b=32 -s=</path/to/save/folder>

where </path/to/save/folder> is a string containing the folder name you'd like to use for the results (folder should not yet exist, or it will be overwritten). This will default to ../results/mlp_results if left unspecified. Results of the 1st-order and 2nd-order generalization tests will be recorded for all 10 trials of each dataset size. The parameter ep=200 indicates that you'd like to train for 200 epochs, parameter r=10 indicates that you'd like to train 10 model runs for each dataset size, and parameter b=32 indicates that you'd like to use a batch size of 32 (although, for a training set with N samples, the batch size will be min(N/5, 32) to ensure that we use at least 5 batches in SGD). This model will be trained on CPU, as it is too small to benefit from GPU.

Once training is complete, you can plot heatmaps & contours of the results using the notebook plot_results_experiments1and2.ipynb.

To perform the parametric sensitivity tests with the MLP, see the notebook parametric_tests_mlp.ipynb for a walk-through.

Experiment 2

To train the CNN of Experiment 2 on all dataset sizes, i.e. all pairs of {# categories, # examples}, run the following command using cnn_loop.py from the scripts folder:

python cnn_loop.py -ep=400 -r=10 -b=32 -s=</path/to/save/folder> -g=0

where </path/to/save/folder> is again a string containing the folder name you'd like to use for the results. This will default to ../results/cnn_results if left unspecified. Note that we are using 400 epochs as opposed to the 200 from Experiment 1. The additional parameter -g=0 indicates which GPU you would like to use for training, as this experiment will benefit significantly from GPU speedup. Defaults to the system default if left unspecified.

A bottleneck of this experiment is the building of the image datasets used for the generalization tests. These datasets each contain 1000 trials (1000x4 = 4000 images). I have parallelized the code using multiprocessing, selecting a # of processes based on the available resources. You will see a significant speedup with a larger CPU count machine.

Once training is complete, you can plot heatmaps & contours of the results using the notebook plot_results_experiments1and2.ipynb.

To perform the parametric sensitivity tests with the CNN, see the notebook parametric_tests_cnn.ipynb for a walk-through.

arXiv: There are 2 additional experiments in the arXiv version of the paper under section "Experiment 2." First, we repeated the cnn_loop above, but this time training the CNN to label objects according to their color name. To run this experiment, follow the same steps from above but use the script cnn_loop_color.py. Secondly, we visualized the filters of a shape-trained and a color-trained CNN. This can be reproduced using the notebook notebooks/visualize_cnn_filters.ipynb

Experiment 3

To train the 20 models of Experiment 3, run the following command using vocabulary_acceleration.py from the scripts folder:

python vocabulary_acceleration_multi.py -ep=70 -sf=0.6 -cf=0.2 -ca=60 -ex=10 -b=10 -r=20 -t=500 -g=0 -sp=</path/to/save/folder>

where </path/to/save/folder> is again a string containing the folder name you'd like to use for the results. For each model, the cumulative vocabulary size and the 2nd-order generalization test results at each epoch will be stored in a file called run%i.csv where %i is the index of the particular model.

Once training is complete, you can analyze the results using the notebook analyze_vocabulary_acceleration.ipynb.

Results

You are welcome to re-run all experiments using the instructions above. However, for time efficiency you can also inspect our results from these experiments, which are included in the results/ subfolder. Here you will find the results of Experiment 1 (located in mlp_results/), Experiment 2 (located in cnn_results/ and, for additional arXiv paper experiment, cnn_results_color/), and Experiment 3 (located in vocab_accel/).

Citing this work

Please use the following BibTeX entry when citing this paper:

@article{Feinman2018,
  title={Learning inductive biases with simple neural networks},
  author={Reuben Feinman and Brenden M. Lake},
  journal={arXiv preprint arXiv:1802.02745},
  year={2018}
}

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Code for "Learning Inductive Biases with Simple Neural Networks" (Feinman & Lake, 2018).

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