papers AI Learner
The Github is limit! Click to go to the new site.

In Search of Meaning: Lessons, Resources and Next Steps for Computational Analysis of Financial Discourse

2019-03-28
Mahmoud El-Haj, Paul Rayson, Martin Walker, Steven Young, Vasiliki Simaki

Abstract

We critically assess mainstream accounting and finance research applying methods from computational linguistics (CL) to study financial discourse. We also review common themes and innovations in the literature and assess the incremental contributions of work applying CL methods over manual content analysis. Key conclusions emerging from our analysis are: (a) accounting and finance research is behind the curve in terms of CL methods generally and word sense disambiguation in particular; (b) implementation issues mean the proposed benefits of CL are often less pronounced than proponents suggest; (c) structural issues limit practical relevance; and (d) CL methods and high quality manual analysis represent complementary approaches to analyzing financial discourse. We describe four CL tools that have yet to gain traction in mainstream AF research but which we believe offer promising ways to enhance the study of meaning in financial discourse. The four tools are named entity recognition (NER), summarization, semantics and corpus linguistics.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1903.12271

PDF

http://arxiv.org/pdf/1903.12271


Similar Posts

Comments