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18 résultats avec le mot-clé: 'query based topic detection using concepts named entities'

Query-Based Topic Detection Using Concepts and Named Entities

We compared the clustering performance of the proposed topic detection framework, in which the DBSCAN-Martingale algorithm (for estimating the number of topics) and LDA (for

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2022
Traitement de l’information

Réaliser sous forme d'un schéma-blocs le fonctionnement d'une horloge qui compte les secondes, les minutes et les heures6. Télécharger le fichier "ISIS" de l'horloge

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2022
Named Entity Recognition in Tatar: Corpus-Based Algorithm

Extracting named entities using the algorithm proposed by the authors requires an initial search query which should contain an indicator of a particular named

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2022
LD HEALTH

19.4 0n the other hand, if large-scale disEribution of ivermectin is likely to have only a temporary effect on transmission, the use of the drug for the

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2022
Leçon N°5 : Triangles

Ce point commun au trois médiatrices est le centre du cercle passant par les trois sommets du triangle, que l'on appelle cercle circonscrit au triangle.. Pour obtenir le

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2022
Detection and interpretation of shared genetic influences on 42 human traits

(At a less stringent threshold of a relative likelihood of 20 in favor of a causal model, we identified 11 additional pairs of traits (Supplementary Figure 14)) Simulations

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2021
IRIT at CLEF 2004: The English GIRT Task

We have evaluated the performances of our IRS (Mercure) in domain specific corpus, and a method for query reformulation based on concepts detection and weighting using WordNet

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2022
2021/2022

Habrá que hablar con la empresa para firmar un convenio de prácticas curriculares desde la Escuela. Propuestas promovidas por el propio estudiante a través del contacto directo

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2022
A High Precision Information Retrieval Method for WiQA

Given that the topics referred to named entities such as persons, locations or organisations, it was decided not to process the topic in any way and to query the retrieval engine

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2022
KIT MEDIA ère marque d information présente dans points de distribution professionnelle

pour promouvoir Zepros Territorial auprès des nouveaux élus.. Sur-couverture

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2022
Séance 11 : Parler autrement qu’avec des mots ? Lecture

Le texte et l’image portent le même regard sur les limites des images par rapport à ce qui est exprimé : traduire des mots en images est extrêmement limité car les images

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2022
Fichier PDF 0910 dossier DIF DARP[1].pdf

Annulation plus de 30 jours avant le premier jour de formation : remboursement de la totalité des frais engagés.. Annulation moins de 30 jours avant le premier jour de formation

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2022
DOSSIER APPRENANT SECTEUR SOCIAL

- pour les niveaux post-bac quelles que soient les modalités de sélection : entre le 7 avril 2022 et le démarrage effectif de la formation - des conditions de prise en charge fixées

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2022
Graph Data Exchange with Target Constraints

In this paper, we investigate the problem of data exchange in a heterogeneous setting, where the source is a relational database, the target is a graph database, and the schema

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2022
Amharic-English Information Retrieval with Pseudo Relevance Feedback

Out of dictionary Amharic query terms were taken to be possible named entities in the language, and further filtering was attained through restricted fuzzy matching based on

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2022
Communication through channels in cascade

in the oaee of gaueslan additive noise and for sample by sample retransm1ssion at the intermediate station, it is shown that the optimum 1nput probability density 18 gaussian and

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2021
Multilingual Disambiguation of Named Entities Using Linked Data

In this demo, we will present AGDISTIS deployed on three different languages (English, German and Chinese) and three different knowledge bases (DBpedia, the German DBpedia and

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2022
Recognizing Named Entities using Automatically Extracted Transduction Rules

To this end, we use text mining techniques to extract from an annotated corpus transduction rules that indepen- dently detect beginning or ending boundaries of NEs2. It releases

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2021

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