TY - GEN
T1 - Modern tools for old content-in search of named entities in a Finnish OCRed historical newspaper collection 1771-1910
AU - Kettunen, Kimmo
AU - Mäkelä, Eetu
AU - Kuokkala, Juha
AU - Ruokolainen, Teemu
AU - Niemi, Jyrki
PY - 2016
Y1 - 2016
N2 - Named entity recognition (NER), search, classification and tagging of names and name like frequent informational elements in texts, has become a standard information extraction procedure for textual data. NER has been applied to many types of texts and different types of entities: newspapers, fiction, historical records, persons, locations, chemical compounds, protein families, animals etc. In general a NER system's performance is genre and domain dependent and also used entity categories vary [1]. The most general set of named entities is usually some version of three partite categorization of locations, persons and organizations. In this paper we report first trials and evaluation of NER with data out of a digitized Finnish historical newspaper collection Digi. Digi collection contains 1,960,921 pages of newspaper material from years 1771-1910 both in Finnish and Swedish. We use only material of Finnish documents in our evaluation. The OCRed newspaper collection has lots of OCR errors; its estimated word level correctness is about 74-75 % [2]. Our principal NER tagger is a rule-based tagger of Finnish, FiNER, provided by the FIN-CLARIN consortium. We show also results of limited category semantic tagging with tools of the Semantic Computing Research Group (SeCo) of the Aalto University. FiNER is able to achieve up to 60.0 F-score with named entities in the evaluation data. Seco's tools achieve 30.0-60.0 F-score with locations and persons. Performance of FiNER and SeCo's tools with the data shows that at best about half of named entities can be recognized even in a quite erroneous OCRed text.
AB - Named entity recognition (NER), search, classification and tagging of names and name like frequent informational elements in texts, has become a standard information extraction procedure for textual data. NER has been applied to many types of texts and different types of entities: newspapers, fiction, historical records, persons, locations, chemical compounds, protein families, animals etc. In general a NER system's performance is genre and domain dependent and also used entity categories vary [1]. The most general set of named entities is usually some version of three partite categorization of locations, persons and organizations. In this paper we report first trials and evaluation of NER with data out of a digitized Finnish historical newspaper collection Digi. Digi collection contains 1,960,921 pages of newspaper material from years 1771-1910 both in Finnish and Swedish. We use only material of Finnish documents in our evaluation. The OCRed newspaper collection has lots of OCR errors; its estimated word level correctness is about 74-75 % [2]. Our principal NER tagger is a rule-based tagger of Finnish, FiNER, provided by the FIN-CLARIN consortium. We show also results of limited category semantic tagging with tools of the Semantic Computing Research Group (SeCo) of the Aalto University. FiNER is able to achieve up to 60.0 F-score with named entities in the evaluation data. Seco's tools achieve 30.0-60.0 F-score with locations and persons. Performance of FiNER and SeCo's tools with the data shows that at best about half of named entities can be recognized even in a quite erroneous OCRed text.
KW - Finnish
KW - Historical Newspaper Collections
KW - Named Entity Recognition
UR - http://www.scopus.com/inward/record.url?scp=84988825893&partnerID=8YFLogxK
UR - http://ceur-ws.org/Vol-1670/
M3 - Conference article in proceedings
AN - SCOPUS:84988825893
T3 - CEUR Workshop Proceedings
SP - 124
EP - 135
BT - Lernen, Wissen, Daten, Analysen 2016
A2 - Krestel, Ralf
A2 - Mottin, Davide
A2 - Müller, Emmanuel
PB - CEUR
T2 - Lernen, Wissen, Daten, Analysen
Y2 - 12 September 2016 through 14 September 2016
ER -