
@article{ref1,
title="Bridging big data and qualitative methods in the social sciences: a case study of Twitter responses to high profile deaths by suicide",
journal="Online social networks and media",
year="2017",
author="Karamshuk, D. and Shaw, F. and Brownlie, J. and Sastry, N.",
volume="1",
number="",
pages="33-43",
abstract="With the rise of social media, a vast amount of new primary research material has become available to social scientists, but the sheer volume and variety of this make it difficult to access through the traditional approaches: close reading and nuanced interpretations of manual qualitative coding and analysis. This paper sets out to bridge the gap by developing semi-automated replacements for manual coding through a mixture of crowdsourcing and machine learning, seeded by the development of a careful manual coding scheme from a small sample of data. To show the promise of this approach, we attempt to create a nuanced categorisation of responses on Twitter to several recent high profile deaths by suicide. Through these, we show that it is possible to code automatically across a large dataset to a high degree of accuracy (71%), and discuss the broader possibilities and pitfalls of using Big Data methods for Social Science. © 2017 The Authors<p /><p>Language: en</p>",
language="en",
issn="2468-6964",
doi="10.1016/j.osnem.2017.01.002",
url="http://dx.doi.org/10.1016/j.osnem.2017.01.002"
}