In the Humanities and Social Sciences, there is increasing interest in approaches to information extraction, prediction, intelligent linkage, and dimension reduction applicable to large text corpora. With approaches in these fields being grounded in traditional statistical techniques, the need arises for frameworks whereby advanced NLP techniques such as topic modelling may be incorporated within classical methodologies. This paper provides a classical, supervised, statistical learning framework for prediction from text, using topic models as a data reduction method and the topics themselves as predictors, alongside typical statistical tools for predictive modelling. We apply this framework in a Social Sciences context (applied animal behav...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Statistical topic models provide a general data-driven framework for automated discovery of high-lev...
Topic modelling is an area of natural language processing (NLP) in which a corpus of text documents...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Abstract—We investigated the validity of applying topic modeling to unstructured student writing fro...
The changing social reality, which is increasingly digitally networked, requires new research method...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
This chapter presents a method for analyzing text data called topic modeling and applying it to the ...
In the era of the internet, we are connected to an overwhelming abundance of information. As more f...
In Machine Learning dienen topic models der Entdeckung abstrakter Strukturen in großen Textsammlunge...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
In this era, massive amounts of data are routinely collected and warehoused to be analyzed for scien...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Statistical topic models provide a general data-driven framework for automated discovery of high-lev...
Topic modelling is an area of natural language processing (NLP) in which a corpus of text documents...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
It is estimated that the world’s data will increase to roughly 160 billion terabytes by 2025, with m...
Abstract—We investigated the validity of applying topic modeling to unstructured student writing fro...
The changing social reality, which is increasingly digitally networked, requires new research method...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
This chapter presents a method for analyzing text data called topic modeling and applying it to the ...
In the era of the internet, we are connected to an overwhelming abundance of information. As more f...
In Machine Learning dienen topic models der Entdeckung abstrakter Strukturen in großen Textsammlunge...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
In this era, massive amounts of data are routinely collected and warehoused to be analyzed for scien...
Topic adaptation for language modeling is concerned with adjusting the probabilities in a language m...
Topic Modeling is a well-known unsupervised learning technique used when dealing with text data. It ...
Topic adaptation for language modeling is concerned with ad-justing the probabilities in a language ...
Statistical topic models provide a general data-driven framework for automated discovery of high-lev...