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Please use this identifier to cite or link to this item: https://repository.esi-sba.dz/jspui/handle/123456789/796
Title: A Comparative Analysis of Named Entity Recognition Methods on Financial Texts
Authors: MILOUDI, MOhamed
Keywords: Named Entity Recognition
Financial NLP
Benchmarking
SpaCy, BERT
RoBERTa
Flair
GLiNER
Large Language
Models
F1 Scores
Performance Comparison
Issue Date: 2025
Abstract: Financial institutions process large volumes of text data requiring automated entity extraction. Named Entity Recognition systems must handle domain-specific terminology and specialized entity types found in financial documents. Existing NER evaluations focus primarily on general-purpose texts, leaving performance on financial content insufficiently understood. This master’s thesis evaluates 16 Named Entity Recognition models across four paradigms on financial texts using the FiNER-ORD dataset. We tested traditional methods, advanced contextual models, transformer-based approaches, and large language models. All models were evaluated on 300 financial text samples using standardized F1 scoring and processing speed measurements. Results show performance differences across model categories. Large language models achieved the highest accuracy, followed by advanced contextual models. Traditional methods demonstrated superior processing speeds. Location entities proved most difficult to recognize across all approaches, while person entities showed consistently higher recognition rates. This work establishes performance benchmarks for NER systems on financial texts and provides guidance for model selection based on accuracy and speed requirements. The evaluation framework and results support informed decision-making for financial text processing applications
Description: Supervisor : Dr. BEDJAOUI Mohamed / Co-Supervisor : Dr. BOUZIDI Khalil
URI: https://repository.esi-sba.dz/jspui/handle/123456789/796
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