- Info
Federico Ricci-Tersenghi
Sapienza Università di Roma
DAYDREAMING HOPFIELD NETWORKS AND THEIR SURPRISING EFFECTIVENESS ON CORRELATED DATA
To improve the storage capacity of the Hopfield model, we develop a version of the dreaming algorithm that is perpetually exposed to data and therefore called Daydreaming. Daydreaming is not destructive and converges asymptotically to a stationary coupling matrix. When trained on random uncorrelated examples, the model shows optimal performance in terms of the size of the basins of attraction of stored examples and the quality of reconstruction. We also train the Daydreaming algorithm on correlated data obtained via the random-features model and argue that it spontaneously exploits the correlations thus increasing even further the storage capacity and the size of the basins of attraction. Moreover, the Daydreaming algorithm is also able to stabilize the features hidden in the data. Finally, we test Daydreaming on the MNIST dataset and show that it still works surprisingly well, producing attractors that are close to unseen examples and class prototypes.