logo
calendar6 апрел 2024
view2
Asosiy til:O'zbek

NER YONDASHUVI BILAN O’ZBEK TILIDAGI MATNDAN MIQDORLARNI ANIQLASH QOIDALARI

Fan yo'nalishi:
pdf

6610ef256ce06.pdf

PDF

MAQOLA ANNOTATSIYASI

quote
Ushbu maqolada qoidaga asoslangan nomlangan ob'ektni tanib olish (Named Entity Recognation-NER) asoslari va mavjud usullari qiyosiy tahlil qilingan va qoidaga asoslangan NER ning avzalliklari keltirib o’tilgan. Xususan, NER yordamida matndan miqdor ko'rsatkichlarni ajratib olish masalasi muhokama qilinadi. Qoidalarga asoslangan NER o'lchovlar, foizlar, pul birliklari kabi miqdorlarni aniqlash va chiqarish uchun ko'p qirrali va moslashtirilgan yondashuvni taklif etadi. Lingvistik qoidalar va kalit so’zlarni ishlab chiqish orqali soha mutaxassislari tizimni sohaning o'ziga xos xususiyatlariga moslashtirishi mumkin, bu esa miqdorni aniqlashda aniqlik va moslikni ta'minlaydi. Maqola natijasida o’zbek tilidagi matndan miqdorlarni qoidaga asoslangan NER orqali ajratib olish uchun bir nechta qoidalar taklif etilgan.

MUALIFLAR

Teglar

# unit# birlik# правило# rule# qoida# NER# kalit so'z# НЭР# ключевое слово# единица измерения# keyword

Maqolani baholang

0

0 ta

Maqola idintifikatorlari

Foydalanilgan adabiyotlar

Gürkan, A. T., B. Özenç, I. Çam, B. Avar, G. Ercan, and O. T. Yıldız. 2017. A new approachfor named entity recognition. 2nd international conference on computer science and engineering 474–79. doi: 10.1109/UBMK.2017.8093439

Shah, D. N., and H. Bhadka. 2017. A survey on various approaches used in named entity recognition for Indian languages. International Journal of Computer Application 167 (1):11–18. doi:10.5120/ijca2017913878.

L.A.Pizzato ,D.Molla , C.Paris, Pseudo relevance feedback using named entities for question answering, in: Proceeding soft he 2006 Australian Language Technology Workshop, ALTW-2006,2006,pp.89–90

Sazali, S. S., Rahman, N. A., & Bakar, Z. A. (2016). Information extraction: Evaluating named entity recognition from classical Malay documents. 2016 Third International Conference on Information Retrieval and Knowledge Management (CAMP). doi:10.1109/infrkm.2016.7806333

Luca Foppiano, Laurent Romary, Masashi Ishii, and Mikiko Tanifuji. 2019. Automatic identification and normalisation of physical measurements in scientific literature. In Proceedings of the ACM Symposium on Document Engineering 2019, Berlin, Germany, September 23-26, 2019, pages 24:1–24:4. ACM

Subhro Roy, Tim Vieira, and Dan Roth. 2015. Reasoning about quantities in natural language. Transactions of the Association for Computational Linguistics, 3:1–13.

Tongliang Li, Lei Fang, Jian-Guang Lou, Zhoujun Li, and Dongmei Zhang. 2021. AnaSearch: Extract, Retrieve and Visualize Structured Results from Unstructured Text for Analytical Queries. In WSDM’ 21, The Fourteenth ACM International Conference on Web Search and Data Mining, Virtual Event, Israel, March 8-12, 2021, pages 906–909. ACM

Sunita Sarawagi and Soumen Chakrabarti. 2014. Opendomain Quantity Queries on Web Tables: Annotation, Response, and Consensus Models. In The 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’14, New York, NY, USA - August 24 - 27, 2014, pages 711–720. ACM.

Somnath Banerjee, Soumen Chakrabarti, and Ganesh Ramakrishnan. 2009. Learning to Rank for Quantity Consensus Queries. In Proceedings of the 2 nd Annual International ACM SIGIR Conference on Research and Development in Information Retrieval, SIGIR 2009, Boston, MA, USA, July 19-23, 2009, pages 243–250. ACM.

Arun S. Maiya, Dale Visser, and Andrew Wan. 2015. Mining Measured Information from Text. In Proceedings of the 38th International SIGIR Conference on Research and Development in Information Retrieval, pages 899–902. ACM.

Ben Abacha, A., Zweigenbaum, P.: Medical entity recognition: a comparaison of semantic and statistical methods. In: Proceedings of BioNLP 2011 Workshop, pp. 56–64. Association for Computational Linguistics, Portland, June 2011. http://www.aclweb.org/anthology/W11-0207

public

SLIB.uz — O'zbekiston ilmiy jurnallari va maqolalar yagona tizimda ilmiy nashirlarni bir joyda ko'rish, izlash va ulardan foydalanish imkonini beruvchi zamonaviy platforma.

Ijtimoiy tarmoqlarda
instagramtelegramyoutubefacebook

Bog'lanish uchun

Manzil:Chilonzor tumani Qatortol ko'chasi 60B

Tel:+998(55)511-44-00

Savol-javob va takliflar uchun

© 2026 Barcha huquqlar himoyalangan.