BM25 Probabilistic Ranking (Okapi)
BM25, the Okapi 'Best Matching 25' function, is the dominant classical ranking function in information retrieval and the workhorse term-weighting scheme behind most lexical search engines and bibliographic databases. Developed by Stephen Robertson, Karen Spärck Jones and colleagues at City University London and formalized in Robertson and Zaragoza's 2009 monograph on the Probabilistic Relevance Framework, BM25 scores a document against a query as a sum, over query terms, of inverse-document-frequency weights multiplied by a saturating, length-normalized transform of within-document term frequency. Two free parameters control how quickly repeated terms stop adding evidence (k1) and how strongly document length is penalized (b). BM25 consistently outperformed plain TF-IDF in the TREC evaluations and remains the standard first-stage retrieval baseline against which modern neural rankers are measured.
Přečíst celou metodu
Pro přečtení této sekce se přihlaste s bezplatným účtem.
Mapa metod
Okolí příbuzných metod — vyberte uzel, který chcete prozkoumat.
Zdroje
- Robertson, S., & Zaragoza, H. (2009). The Probabilistic Relevance Framework: BM25 and Beyond. Foundations and Trends in Information Retrieval, 3(4), 333-389. DOI: 10.1561/1500000019 ↗
- Robertson, S. E., Walker, S., Jones, S., Hancock-Beaulieu, M. M., & Gatford, M. (1995). Okapi at TREC-3. In Overview of the Third Text REtrieval Conference (TREC-3), NIST Special Publication 500-225, 109-126. link ↗
Jak citovat tuto stránku
ScholarGate. (2026, June 23). BM25 Probabilistic Ranking (Okapi BM25 Term-Weighting and Document Scoring). ScholarGate. https://scholargate.app/cs/bibliometrics/bm25-ranking
Která metoda?
Postavte tuto metodu vedle jejích nejbližších příbuzných a čtěte je vedle sebe — knihovna položí knihy na stůl; volba je na vás.
- Citation Context and Sentiment AnalysisBibliometrie↔ porovnat
- Mean Average Precision (MAP)Bibliometrie↔ porovnat
- Normalized Discounted Cumulative Gain (nDCG)Bibliometrie↔ porovnat
Odkazuje sem
Podobné metody
Našli jste na této stránce chybu? Nahlaste ji nebo navrhněte opravu →