A Deep Boltzmann Machine is described for learning a generative model of data that consists of multiple and diverse input modalities. The model can be used to extract a unified representation that fuses modalities together. We find that this representation is useful for classification and information retrieval tasks. The model works by learning a probability density over the space of multimodal inputs. It uses states of latent variables as representations of the input. The model can extract this representation even when some modalities are absent by sampling from the conditional distribution over them and filling them in. Our experimental results on bi-modal data consisting of images and text show that the Multimodal DBM can learn a good ge...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
Representation Learning has become an active topic of research in the recent years. Neural models h...
A Deep Boltzmann Machine is described for learning a generative model of data that consists of multi...
Data often consists of multiple diverse modalities. For example, images are tagged with textual info...
Data often consists of multiple diverse modalities. For example, images are tagged with textual info...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
We introduce a type of Deep Boltzmann Machine (DBM) that is suitable for ex-tracting distributed sem...
This paper presents an unsupervised multi-modal learning system that learns as-sociative representat...
We introduce a type of Deep Boltzmann Ma-chine (DBM) that is suitable for extracting distributed sem...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
Representation Learning has become an active topic of research in the recent years. Neural models h...
A Deep Boltzmann Machine is described for learning a generative model of data that consists of multi...
Data often consists of multiple diverse modalities. For example, images are tagged with textual info...
Data often consists of multiple diverse modalities. For example, images are tagged with textual info...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
This thesis is a compilation of five research contributions whose goal is to do unsupervised and tra...
We introduce a new method for training deep Boltzmann machines jointly. Prior methods of training DB...
We introduce a type of Deep Boltzmann Machine (DBM) that is suitable for ex-tracting distributed sem...
This paper presents an unsupervised multi-modal learning system that learns as-sociative representat...
We introduce a type of Deep Boltzmann Ma-chine (DBM) that is suitable for extracting distributed sem...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
One of the key factors driving the success of machine learning for scene understanding is the develo...
Representation Learning has become an active topic of research in the recent years. Neural models h...