Digital media tend to combine text and images to express richer information, especially on image hosting and online shopping websites. This trend presents a challenge in understanding the contents from different forms of information. Features representing visual information are usually sparse in high dimensional space, which makes the learning process intractable. In order to understand text and its related visual information, we present a new graphical model-based approach to discover more meaningful information in rich media. We extend the standard Latent Dirichlet Allocation (LDA) framework to learn in high dimensional feature spaces
The majority of machine learning research has been fo-cused on building models and inference techniq...
Latent dirichlet allocation Transfer learning a b s t r a c t Due to the scarcity of user interest i...
Part 1: Information & Communication Technology-EurAsia Conference 2014, ICT-EurAsia 2014Internationa...
Latent Dirichlet Allocation (LDA) is a popular probabilistic model for information retrieval. Many e...
Online image repositories such as Flickr contain hundreds of millions of images and are growing quic...
Online image repositories such as Flickr contain hundreds of millions of images and are growing quic...
This paper describes research that seeks to supersede human inductive learning and reasoning in high...
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections o...
This paper proposes a unified approach to learning in environments in which patterns can be represen...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Recent investigations into grounded models of language have shown that holistic views of language an...
. Learning to recognize visual objects from examples requires the ability to find meaningful pattern...
Topic model is a popular tool for visual concept learning. Most topic models are either unsupervised...
The majority of machine learning research has been focused on building models and inference techniqu...
Two new extensions of latent Dirichlet allocation (LDA), denoted topic-supervised LDA (ts-LDA) and c...
The majority of machine learning research has been fo-cused on building models and inference techniq...
Latent dirichlet allocation Transfer learning a b s t r a c t Due to the scarcity of user interest i...
Part 1: Information & Communication Technology-EurAsia Conference 2014, ICT-EurAsia 2014Internationa...
Latent Dirichlet Allocation (LDA) is a popular probabilistic model for information retrieval. Many e...
Online image repositories such as Flickr contain hundreds of millions of images and are growing quic...
Online image repositories such as Flickr contain hundreds of millions of images and are growing quic...
This paper describes research that seeks to supersede human inductive learning and reasoning in high...
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections o...
This paper proposes a unified approach to learning in environments in which patterns can be represen...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Recent investigations into grounded models of language have shown that holistic views of language an...
. Learning to recognize visual objects from examples requires the ability to find meaningful pattern...
Topic model is a popular tool for visual concept learning. Most topic models are either unsupervised...
The majority of machine learning research has been focused on building models and inference techniqu...
Two new extensions of latent Dirichlet allocation (LDA), denoted topic-supervised LDA (ts-LDA) and c...
The majority of machine learning research has been fo-cused on building models and inference techniq...
Latent dirichlet allocation Transfer learning a b s t r a c t Due to the scarcity of user interest i...
Part 1: Information & Communication Technology-EurAsia Conference 2014, ICT-EurAsia 2014Internationa...