In this work, automatic analysis of themes contained in a large corpora of
judgments from public procurement domain is performed. The employed technique
is unsupervised latent Dirichlet allocation (LDA). In addition, it is proposed,
to use LDA in conjunction with recently developed method of unsupervised
keyword extraction. Such an approach improves the interpretability of the
automatically obtained topics and allows for better computational performance.
The described analysis illustrates a potential of the method in detecting
recurring themes and discovering temporal trends in lodged contract appeals.
These results may be in future applied to improve information retrieval from
repositories of legal texts or as auxiliary material for legal analyses carried
out by human experts.Comment: "Legal Knowledge and Information Systems, JURIX 2014: The
Twenty-Seventh Annual Conference", series Frontiers in Artificial
Intelligence and Applications, Volume 271, edited by Rinke Hoekstra,
IOSPress, 201