Back to the Roots of Genres
Text Classification by Language Function
- authored by
- Henning Wachsmuth, Kathrin Bujna
- Abstract
The term “genre” covers different aspects of both texts and documents, and it has led to many classification schemes. This makes different approaches to genre identification incomparable and the task itself unclear. We introduce the linguistically motivated text classification task language function analysis, LFA, which focuses on one well-defined aspect of genres. The aim of LFA is to determine whether a text is predominantly expressive, appellative, or informative. LFA can be used in search and mining applications to efficiently filter documents of interest. Our approach to LFA relies on fast machine learning classifiers with features from different research areas. We evaluate this approach on a new corpus with 4,806 product texts from two domains. Within one domain, we correctly classify up to 82% of the texts, but differences in feature distribution limit accuracy on out-of-domain data.
- External Organisation(s)
-
Paderborn University
- Type
- Conference contribution
- Pages
- 632-640
- No. of pages
- 9
- Publication date
- 11.2011
- Publication status
- Published
- ASJC Scopus subject areas
- Language and Linguistics, Artificial Intelligence, Software, Linguistics and Language
- Electronic version(s)
-
https://aclanthology.org/I11-1071.pdf (Access:
Open)