TY - JOUR
T1 - LaMa: a thematic labelling web application
AU - Bogachenkova, Victoria
AU - Costa Martins, Eduardo
AU - Jansen, Jarl
AU - Olteniceanu, Ana-Maria
AU - Henkemans, Bartjan
AU - Lavin, Chinno
AU - Nguyen, Linh
AU - Bradley, Thea
AU - Fürst, Veerle
AU - Muctadir, Hossain Muhammad
AU - van den Brand, Mark G.J.
AU - Cleophas, Loek G.W.A.
AU - Serebrenik, Alexander
PY - 2023/5/8
Y1 - 2023/5/8
N2 - Qualitative analysis of data is relevant for a variety of domains including empirical research studies and social sciences. While performing qualitative analysis of large textual data sets such as data from interviews, surveys, mailing lists, and code repositories, condensing pieces of data into a set of terms or keywords simplifies analysis, and helps in obtaining useful insight. This condensation of data can be achieved by associating keywords, a.k.a. labels, with text fragments, a.k.a artifacts. It is essential during this type of research to achieve greater accuracy, facilitate collaboration, build consensus, and limit bias. LaMa, short for Labelling Machine, is an open source web application developed for aiding in thematic analysis of qualitative data. The source code and the documentation of the tool are available at https://github.com/muctadir/lama. In addition to being open-source, LaMa facilitates thematic analysis through features such as artifact based collaborative labelling, consensus building through conflict resolution techniques, grouping of labels into themes, and private installation with complete control over research data. With the help of this tool and flow it enforces, thematic analysis becomes less time consuming and more structured.
AB - Qualitative analysis of data is relevant for a variety of domains including empirical research studies and social sciences. While performing qualitative analysis of large textual data sets such as data from interviews, surveys, mailing lists, and code repositories, condensing pieces of data into a set of terms or keywords simplifies analysis, and helps in obtaining useful insight. This condensation of data can be achieved by associating keywords, a.k.a. labels, with text fragments, a.k.a artifacts. It is essential during this type of research to achieve greater accuracy, facilitate collaboration, build consensus, and limit bias. LaMa, short for Labelling Machine, is an open source web application developed for aiding in thematic analysis of qualitative data. The source code and the documentation of the tool are available at https://github.com/muctadir/lama. In addition to being open-source, LaMa facilitates thematic analysis through features such as artifact based collaborative labelling, consensus building through conflict resolution techniques, grouping of labels into themes, and private installation with complete control over research data. With the help of this tool and flow it enforces, thematic analysis becomes less time consuming and more structured.
U2 - 10.21105/joss.05135
DO - 10.21105/joss.05135
M3 - Article
SN - 2475-9066
VL - 8
JO - Journal of Open Source Software
JF - Journal of Open Source Software
IS - 85
M1 - 5135
ER -