Módszerek összehasonlítása
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| Szemantikai szerepcímkézés (SRL)× | Névvel ellátott entitás felismerés (NER)× | Kérdés-válaszadás (QA)× | |
|---|---|---|---|
| Tudományterület | Szövegbányászat | Szövegbányászat | Szövegbányászat |
| Módszercsalád | Process / pipeline | Process / pipeline | Process / pipeline |
| Keletkezés éve≠ | 2002 | — | — |
| Megalkotó≠ | Daniel Gildea & Daniel Jurafsky | — | — |
| Típus≠ | NLP shallow semantic parsing task | NLP sequence-labelling task | NLP text-comprehension task |
| Alapmű≠ | Gildea, D. & Jurafsky, D. (2002). Automatic Labeling of Semantic Roles. Computational Linguistics, 28(3), 245-288. DOI ↗ | Nadeau, D. & Sekine, S. (2007). A survey of named entity recognition. Lingvisticae Investigationes. link ↗ | Rajpurkar, P. et al. (2016). SQuAD: 100,000+ Questions for Machine Comprehension of Text. EMNLP. DOI ↗ |
| Alternatív nevek | SRL, shallow semantic parsing, Anlamsal Rol Etiketleme (SRL) | NER, entity tagging, Adlandırılmış Varlık Tanıma (NER) | QA, machine reading comprehension, Soru Cevaplama (Question Answering) |
| Kapcsolódó≠ | 3 | 3 | 4 |
| Összefoglaló≠ | Semantic role labeling, introduced by Gildea and Jurafsky in 2002, is a natural-language-processing task that assigns semantic roles — who did what to whom, where, when, and how — to the components around a verb (predicate) in a sentence. It turns plain text into structured predicate-argument representations and is a foundational tool for event extraction. | Named entity recognition (NER) is a natural-language-processing task that automatically detects and labels entities in text — such as people, organisations, locations, and dates. Surveyed by Nadeau and Sekine (2007) and later advanced with neural architectures by Lample et al. (2016), it turns free-running text into tagged spans that downstream tools can use. | Question answering is a natural-language-processing task that automatically answers natural-language questions grounded in a given context passage, using either extractive or generative approaches. The task was crystallised by the SQuAD benchmark of Rajpurkar et al. (2016), and later models such as XLNet (Yang et al., 2019) pushed reading-comprehension accuracy higher. |
| ScholarGateAdatkészlet ↗ |
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