This paper presents the Topic-Aspect Model (TAM), a Bayesian mixture model which jointly discovers topics and aspects. We broadly define an aspect of a document as a characteristic that spans the document, such as an underlying theme or perspective. Unlike previous models which cluster words by topic or aspect, our model can generate token assignments in both of these dimensions, rather than assuming words come from only one of two orthogonal models. We present two applications of the model. First, we model a corpus of computational linguistics abstracts, and find that the scientific topics identified in the data tend to include both a computational aspect and a linguistic aspect. For example, the computational aspect of GRAMMA...
Nowadays the explosion of Web information has led to the boom of massive web documents such as news ...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
© Springer International Publishing AG 2017.We study topic models designed to be used for sentiment ...
Probabilistic topic models are statistical methods whose aim is to discover the latent structure in ...
The syntactic topic model (STM) is a Bayesian nonparametric model of language that discovers latent ...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
A crucial task in sentiment analysis is aspect detection: the step of selecting the aspects on which...
Recently topic models have emerged as a powerful tool to analyze document collections in an unsuperv...
Topic models like latent Dirichlet allocation (LDA) provide a framework for analyzing large datasets...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Documents, such as those seen on Wikipedia and Folksonomy, have tended to be assigned with multiple ...
Advances in neural sequence models and large-scale pre-trained language models have made a great imp...
We introduce the Spherical Admixture Model (SAM), a Bayesian topic model over arbitrary `2 normalize...
© Springer Nature Singapore Pte Ltd. 2018. A topic model is an unsupervised model to automatically d...
Nowadays the explosion of Web information has led to the boom of massive web documents such as news ...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
© Springer International Publishing AG 2017.We study topic models designed to be used for sentiment ...
Probabilistic topic models are statistical methods whose aim is to discover the latent structure in ...
The syntactic topic model (STM) is a Bayesian nonparametric model of language that discovers latent ...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
A crucial task in sentiment analysis is aspect detection: the step of selecting the aspects on which...
Recently topic models have emerged as a powerful tool to analyze document collections in an unsuperv...
Topic models like latent Dirichlet allocation (LDA) provide a framework for analyzing large datasets...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Documents, such as those seen on Wikipedia and Folksonomy, have tended to be assigned with multiple ...
Advances in neural sequence models and large-scale pre-trained language models have made a great imp...
We introduce the Spherical Admixture Model (SAM), a Bayesian topic model over arbitrary `2 normalize...
© Springer Nature Singapore Pte Ltd. 2018. A topic model is an unsupervised model to automatically d...
Nowadays the explosion of Web information has led to the boom of massive web documents such as news ...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
© Springer International Publishing AG 2017.We study topic models designed to be used for sentiment ...