Abstract—Topic models, which factor each document into different topics and represent each topic as a distribution of terms, have been widely and successfully used to better understand collections of text documents. However, documents are also associated with further information, such as the set of real-world entities mentioned in them. For example, news articles are usually related to several people, organizations, countries or locations. Since those associated entities carry rich information, it is highly desirable to build more expressive, entity-based topic models, which can capture the term distri-butions for each topic, each entity, as well as each topic-entity pair. In this paper, we therefore introduce a novel Entity Topic Model (ET...
Topic models allow the probabilistic modeling of term frequency occurrences in documents. The fitted...
Thesis (Ph.D.)--University of Washington, 2019Real world entities such as people, organizations and ...
We present a probabilistic generative model of entity relationships and textual attributes that simu...
Entities play an essential role in understanding textual documents, regardless of whether the docume...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Learning semantic representations of documents is essential for various downstream applications, inc...
This article is a (slightly) modified and shortened version of Grün and Hornik (2011), published in...
Abstract. Enterprises have accumulated both structured and unstructured data steadily as computing r...
This article is a (slightly) modified and shortened version of Grün and Hornik (2011), published in...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Text contents are overloaded with the digitization of the data and new contents are transmitted thro...
Traditional information retrieval typically represents data using a bag of words; data mining typica...
One of the major challenges of mining topics from a large corpus is the quality of the constructed t...
With the advent of the Internet, the amount of Semantic Web documents that describe real-world entit...
Traditional information retrieval typically represents data using a bag of words; data mining typica...
Topic models allow the probabilistic modeling of term frequency occurrences in documents. The fitted...
Thesis (Ph.D.)--University of Washington, 2019Real world entities such as people, organizations and ...
We present a probabilistic generative model of entity relationships and textual attributes that simu...
Entities play an essential role in understanding textual documents, regardless of whether the docume...
Topic modeling is an unsupervised learning task that discovers the hidden topics in a ...
Learning semantic representations of documents is essential for various downstream applications, inc...
This article is a (slightly) modified and shortened version of Grün and Hornik (2011), published in...
Abstract. Enterprises have accumulated both structured and unstructured data steadily as computing r...
This article is a (slightly) modified and shortened version of Grün and Hornik (2011), published in...
Topic modeling algorithms, such as LDA, find topics, hidden structures, in document corpora in an un...
Text contents are overloaded with the digitization of the data and new contents are transmitted thro...
Traditional information retrieval typically represents data using a bag of words; data mining typica...
One of the major challenges of mining topics from a large corpus is the quality of the constructed t...
With the advent of the Internet, the amount of Semantic Web documents that describe real-world entit...
Traditional information retrieval typically represents data using a bag of words; data mining typica...
Topic models allow the probabilistic modeling of term frequency occurrences in documents. The fitted...
Thesis (Ph.D.)--University of Washington, 2019Real world entities such as people, organizations and ...
We present a probabilistic generative model of entity relationships and textual attributes that simu...