Temporal data (such as news articles or Twitter feeds) often consists of a mixture of long-lasting trends and popular but short-lasting topics of interest. A truly successful topic modeling strategy should be able to detect both types of topics and clearly locate them in time. In this paper, we compare the variability of topic lengths discovered by several well-known topic modeling methods including latent Dirichlet allocation (LDA), nonnegative matrix factorization (NMF), as well as its tensor counterparts based on the nonnegative CANDECOMP/PARAFAC tensor decomposition (NCPD and Online NCPD). We demonstrate that only tensor-based methods with the dedicated mode for tracking time evolution successfully detect short-lasting topics. Furthermo...
Topic detection (TD) is an important area of research whose primary goal is to detect retrospective ...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Web 2.0 users generate and spread huge amounts of messages in online social media. Such user-generat...
As massive repositories of real-time human commentary, so-cial media platforms have arguably evolved...
Social media platforms like Twitter have become an easy portal for billions of people to connect and...
Social media data tends to cluster in time and space around events, such as sports competitions and ...
In this study, we examined temporal variation in topics regarding new products by classifying words ...
2021 Fall.Includes bibliographical references.With the ever-increasing access to data, one of the gr...
The ongoing European Refugee Crisis has been one of the most popular trending topics on Twitter for ...
Latent topic analysis has emerged as one of the most effective methods for classifying, clustering a...
Streams of user-generated content in social media exhibit patterns of collective attention across di...
Over the past decade years, Internet users were expending rapidly in the world. They form various on...
Texts can be characterized from their content using machine learning and natural language processing...
Micro-blogging services, such as Twitter, offer opportunities to analyse user behaviour. Discovering...
Abstract—Online social and news media generate rich and timely information about real-world events o...
Topic detection (TD) is an important area of research whose primary goal is to detect retrospective ...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Web 2.0 users generate and spread huge amounts of messages in online social media. Such user-generat...
As massive repositories of real-time human commentary, so-cial media platforms have arguably evolved...
Social media platforms like Twitter have become an easy portal for billions of people to connect and...
Social media data tends to cluster in time and space around events, such as sports competitions and ...
In this study, we examined temporal variation in topics regarding new products by classifying words ...
2021 Fall.Includes bibliographical references.With the ever-increasing access to data, one of the gr...
The ongoing European Refugee Crisis has been one of the most popular trending topics on Twitter for ...
Latent topic analysis has emerged as one of the most effective methods for classifying, clustering a...
Streams of user-generated content in social media exhibit patterns of collective attention across di...
Over the past decade years, Internet users were expending rapidly in the world. They form various on...
Texts can be characterized from their content using machine learning and natural language processing...
Micro-blogging services, such as Twitter, offer opportunities to analyse user behaviour. Discovering...
Abstract—Online social and news media generate rich and timely information about real-world events o...
Topic detection (TD) is an important area of research whose primary goal is to detect retrospective ...
Abstract—Web 2.0 users generate and spread huge amounts of messages in online social media. Such use...
Web 2.0 users generate and spread huge amounts of messages in online social media. Such user-generat...