Latent Communication in Artificial Neural Networks
Luca Moschella

TL;DR
This paper introduces the concept of Latent Communication, demonstrating that neural network representations can be unified or translated across different models, architectures, and data modalities, enabling broader reusability and transferability of learned features.
Contribution
It presents the novel idea of Latent Communication, showing that neural representations can be aligned or translated across models and domains, regardless of training specifics.
Findings
Latent representations show similarities across different neural networks.
Universal representations can be projected or translated between models.
Latent Communication applies across various data modalities and tasks.
Abstract
As NNs permeate various scientific and industrial domains, understanding the universality and reusability of their representations becomes crucial. At their core, these networks create intermediate neural representations, indicated as latent spaces, of the input data and subsequently leverage them to perform specific downstream tasks. This dissertation focuses on the universality and reusability of neural representations. Do the latent representations crafted by a NN remain exclusive to a particular trained instance, or can they generalize across models, adapting to factors such as randomness during training, model architecture, or even data domain? This adaptive quality introduces the notion of Latent Communication -- a phenomenon that describes when representations can be unified or reused across neural spaces. A salient observation from our research is the emergence of similarities…
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Taxonomy
TopicsNeural Networks and Applications
