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 positional disentanglement and acc



A Datasets A.1 Shapes3d Shapes3d is a dataset (see Burgess and Kim (2018) and the Tensorflow Datasets package) consisting

Neural Information Processing Systems

The obverter dataset (Bogin et al. (2018)) is available at the following address: Each dense layer in the receiver has 64 neurons. The same set of hyperparameters was used for all the experiments. The hyperparameters were chosen on the original obverter dataset available at the repository referenced in Appendix A.2. In the Straight-Through mode (see Jang et al. (2016)), The above implementation of noise is not the only one possible. Each experiment was run on 100 seeds.


Catalytic Role Of Noise And Necessity Of Inductive Biases In The Emergence Of Compositional Communication

Kuciński, Łukasz, Korbak, Tomasz, Kołodziej, Paweł, Miłoś, Piotr

arXiv.org Artificial Intelligence

Communication is compositional if complex signals can be represented as a combination of simpler subparts. In this paper, we theoretically show that inductive biases on both the training framework and the data are needed to develop a compositional communication. Moreover, we prove that compositionality spontaneously arises in the signaling games, where agents communicate over a noisy channel. We experimentally confirm that a range of noise levels, which depends on the model and the data, indeed promotes compositionality. Finally, we provide a comprehensive study of this dependence and report results in terms of recently studied compositionality metrics: topographical similarity, conflict count, and context independence.