Collection and especially analysis of open-ended survey responses are relatively rare in the discipline and when conducted are almost exclusively done through human coding. We present an alternative, semiautomated approach, the structural topic model (STM) (Roberts, Stewart, and Airoldi 2013; Roberts et al. 2013), that draws on recent developments in machine learning based analysis of textual data. A crucial contribution of the method is that it incorporates information about the document, such as the author's gender, political affiliation, and treatment assignment (if an experimental study). This article focuses on how the STM is helpful for survey researchers and experimentalists. The STM makes analyzing open-ended responses easier, more ...
Topic models are powerful methods to track the latent semantic structure in large collections of uns...
Increasingly, management researchers are using topic modeling, a new method borrowed from computer ...
We analyze all the articles published in the top five (T5) Economics journals be- tween 2002 and 201...
Collection and especially analysis of open-ended survey responses are relatively rare in the discipl...
Open-ended responses are widely used in market research studies. Processing of such responses requir...
This article presents concept mapping as an alternative method to existing codebased and word-based ...
This paper demonstrates how to use the R package stm for structural topic modeling. The structural t...
This paper contributes to a critical methodological discussion that has direct ramifications for pol...
Many scientific disciplines are being revolutionized by the explosion of public data on the web and ...
This collection of three papers develops two statistical techniques for addressing canonical problem...
We provide a brief, non-technical introduction to the text mining methodology known as topic modelin...
The large amount of text that is generated daily on the web through comments on social networks, blo...
In this era, massive amounts of data are routinely collected and warehoused to be analyzed for scien...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
Researchers in information science and related areas have developed various methods for analyzing te...
Topic models are powerful methods to track the latent semantic structure in large collections of uns...
Increasingly, management researchers are using topic modeling, a new method borrowed from computer ...
We analyze all the articles published in the top five (T5) Economics journals be- tween 2002 and 201...
Collection and especially analysis of open-ended survey responses are relatively rare in the discipl...
Open-ended responses are widely used in market research studies. Processing of such responses requir...
This article presents concept mapping as an alternative method to existing codebased and word-based ...
This paper demonstrates how to use the R package stm for structural topic modeling. The structural t...
This paper contributes to a critical methodological discussion that has direct ramifications for pol...
Many scientific disciplines are being revolutionized by the explosion of public data on the web and ...
This collection of three papers develops two statistical techniques for addressing canonical problem...
We provide a brief, non-technical introduction to the text mining methodology known as topic modelin...
The large amount of text that is generated daily on the web through comments on social networks, blo...
In this era, massive amounts of data are routinely collected and warehoused to be analyzed for scien...
The abundance of data in the information age poses an immense challenge for us: how to perform large...
Researchers in information science and related areas have developed various methods for analyzing te...
Topic models are powerful methods to track the latent semantic structure in large collections of uns...
Increasingly, management researchers are using topic modeling, a new method borrowed from computer ...
We analyze all the articles published in the top five (T5) Economics journals be- tween 2002 and 201...