Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data representations and neural networks based on the classical Euclidean geometry. Recently, however, the hyperbolic metric proved to be a powerful tool for data mapping, being able to capture the hierarchical structure of the relations among elements in the data. In this paper we propose the use of hyperbolic learning for SER, and show that the inclusion in the neural network of hyperbolic structures mapping the input into the hyperbolic space can improve the quality of the predictions. The benefits brought by the hyperbolic features are evaluated by developing extensions of existing methods following two approaches. From one side, we modified state-of-t...
As an important research issue in affective computing community, multi-modal emotion recognition has...
The paper reports a new model based on the understanding and encompassing intelligence from brain i....
Recognition of emotions in images is attracting increasing research attention. Recent studies show t...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Abstract Recently, hyperbolic deep neural networks (HDNNs) have been gaining momentum as the deep r...
In recent years, sentiment analysis in conversation has garnered increasing attention due to its wid...
Graph neural networks generalize conventional neural networks to graph-structured data and have rece...
To interact naturally and achieve mutual sympathy between humans and machines, emotion recognition i...
Recently, Hyperbolic Spaces in the context of Non-Euclidean Deep Learning have gained popularity bec...
This paper investigates dimensional emotion prediction and classification from naturalistic facial e...
First version. The package generating the experimental results will be made public in the near futur...
Detecting events and their evolution through time is a crucial task in natural language understandin...
People express their emotions through multiple channels, such as visual and audio ones. Consequently...
Due to its geometric properties, hyperbolic space can support high-fidelity embeddings of tree- and ...
In this paper a radial basis function network architecture is developed that learns the correlation ...
As an important research issue in affective computing community, multi-modal emotion recognition has...
The paper reports a new model based on the understanding and encompassing intelligence from brain i....
Recognition of emotions in images is attracting increasing research attention. Recent studies show t...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Abstract Recently, hyperbolic deep neural networks (HDNNs) have been gaining momentum as the deep r...
In recent years, sentiment analysis in conversation has garnered increasing attention due to its wid...
Graph neural networks generalize conventional neural networks to graph-structured data and have rece...
To interact naturally and achieve mutual sympathy between humans and machines, emotion recognition i...
Recently, Hyperbolic Spaces in the context of Non-Euclidean Deep Learning have gained popularity bec...
This paper investigates dimensional emotion prediction and classification from naturalistic facial e...
First version. The package generating the experimental results will be made public in the near futur...
Detecting events and their evolution through time is a crucial task in natural language understandin...
People express their emotions through multiple channels, such as visual and audio ones. Consequently...
Due to its geometric properties, hyperbolic space can support high-fidelity embeddings of tree- and ...
In this paper a radial basis function network architecture is developed that learns the correlation ...
As an important research issue in affective computing community, multi-modal emotion recognition has...
The paper reports a new model based on the understanding and encompassing intelligence from brain i....
Recognition of emotions in images is attracting increasing research attention. Recent studies show t...