Dynamic topic models (DTM) are commonly used for mining latent topics in evolving web corpora. In this paper, we note that a major limitation of the conventional DTM based models is that they assume a predetermined and fixed scale oftopics. In reality, however, topics may have varying spans and topics of multiple scales can co-exist in a single web or social media data stream. Therefore, DTMs that assume a fixed epoch length may not be able to effectively capture latent topics and thus negatively affect accuracy. In this paper, we propose a Multi-Scale Dynamic Topic Model (MS-DTM) and a complementary Incremental Multi-Scale Dynamic Topic Model (IMS-DTM) inference method that can be used to capture latent topics and their dynamics simultaneo...
Large text temporal collections provide insights into social and cultural change over time. To quant...
We propose a semi-parametric and dynamic rank factor model for topic model-ing, capable of (i) disco...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Dynamic topic models (DTM) are commonly used for mining latent topics in evolving web corpora. In th...
Topic modeling is an important area which aims at indexing and exploring massive data streams. In th...
Topic modeling analyzes documents to learn meaningful patterns of words. For documents collected in ...
Dynamic topic models (DTMs) capture the evolution of topics and trends in time series data. Current ...
Dynamic topic models (DTMs) capture the evolution of topics and trends in time series data. Current ...
We introduce dynamic correlated topic models (DCTM) for analyzing discrete data over time. This mode...
Topic modeling is a machine learning technique that identifies latent topics in a text corpus. There...
Latent topic analysis has emerged as one of the most effective methods for classifying, clustering a...
Social media data are produced continuously by a large and uncontrolled number of users. The dynamic...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Topic models have proven to be a useful tool for discovering latent structures in document collectio...
Modeling the evolution of topics with time is of great value in automatic summarization and analysis...
Large text temporal collections provide insights into social and cultural change over time. To quant...
We propose a semi-parametric and dynamic rank factor model for topic model-ing, capable of (i) disco...
Information extraction from large corpora can be a useful tool for many applications in industry and...
Dynamic topic models (DTM) are commonly used for mining latent topics in evolving web corpora. In th...
Topic modeling is an important area which aims at indexing and exploring massive data streams. In th...
Topic modeling analyzes documents to learn meaningful patterns of words. For documents collected in ...
Dynamic topic models (DTMs) capture the evolution of topics and trends in time series data. Current ...
Dynamic topic models (DTMs) capture the evolution of topics and trends in time series data. Current ...
We introduce dynamic correlated topic models (DCTM) for analyzing discrete data over time. This mode...
Topic modeling is a machine learning technique that identifies latent topics in a text corpus. There...
Latent topic analysis has emerged as one of the most effective methods for classifying, clustering a...
Social media data are produced continuously by a large and uncontrolled number of users. The dynamic...
We propose a dynamic joint sentiment-topic model (dJST) which allows the detection and tracking of v...
Topic models have proven to be a useful tool for discovering latent structures in document collectio...
Modeling the evolution of topics with time is of great value in automatic summarization and analysis...
Large text temporal collections provide insights into social and cultural change over time. To quant...
We propose a semi-parametric and dynamic rank factor model for topic model-ing, capable of (i) disco...
Information extraction from large corpora can be a useful tool for many applications in industry and...