In this paper, we describe the infinite replicated Softmax model (iRSM) as an adaptive topic model, utilizing the combination of the infinite restricted Boltzmann machine (iRBM) and the replicated Softmax model (RSM). In our approach, the iRBM extends the RBM by enabling its hidden layer to adapt to the data at hand, while the RSM allows for modeling low-dimensional latent semantic representation from a corpus. The combination of the two results is a method that is able to self-adapt to the number of topics within the document corpus and hence, renders manual identification of the correct number of topics superfluous. We propose a hybrid training approach to effectively improve the performance of the iRSM. An empirical evaluation is perform...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
When building large-scale machine learning (ML) programs, such as massive topic models or deep neura...
Recently, Neural Topic Models (NTMs) inspired by variational autoencoders have obtained increasingly...
In this paper, we describe the infinite replicated Softmax model (iRSM) as an adaptive topic model, ...
We introduce a two-layer undirected graphical model, called a “Replicated Soft-max”, that can be use...
We describe a new model for learning meaningful representations of text docu-ments from an unlabeled...
Restricted Boltzmann Machine (RBM) has shown great ef-fectiveness in document modeling. It utilizes ...
We are interested in exploring the possibility and benefits of structure learning for deep models. A...
We introduce a type of Deep Boltzmann Machine (DBM) that is suitable for ex-tracting distributed sem...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
textDigital media collections hold an unprecedented source of knowledge and data about the world. Y...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
We present a novel topic mixture-based language model adaptation approach that uses La-tent Dirichle...
The restricted Boltzmann machine (RBM) is a flexible model for complex data. How-ever, using RBMs fo...
We introduce a type of Deep Boltzmann Ma-chine (DBM) that is suitable for extracting distributed sem...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
When building large-scale machine learning (ML) programs, such as massive topic models or deep neura...
Recently, Neural Topic Models (NTMs) inspired by variational autoencoders have obtained increasingly...
In this paper, we describe the infinite replicated Softmax model (iRSM) as an adaptive topic model, ...
We introduce a two-layer undirected graphical model, called a “Replicated Soft-max”, that can be use...
We describe a new model for learning meaningful representations of text docu-ments from an unlabeled...
Restricted Boltzmann Machine (RBM) has shown great ef-fectiveness in document modeling. It utilizes ...
We are interested in exploring the possibility and benefits of structure learning for deep models. A...
We introduce a type of Deep Boltzmann Machine (DBM) that is suitable for ex-tracting distributed sem...
The goal of topic detection or topic modelling is to uncover the hidden topics in a large corpus. It...
textDigital media collections hold an unprecedented source of knowledge and data about the world. Y...
Topic modeling techniques have the benefits of modeling words and documents uniformly under a probab...
We present a novel topic mixture-based language model adaptation approach that uses La-tent Dirichle...
The restricted Boltzmann machine (RBM) is a flexible model for complex data. How-ever, using RBMs fo...
We introduce a type of Deep Boltzmann Ma-chine (DBM) that is suitable for extracting distributed sem...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
When building large-scale machine learning (ML) programs, such as massive topic models or deep neura...
Recently, Neural Topic Models (NTMs) inspired by variational autoencoders have obtained increasingly...