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Dive into the research topics where Georgios Balikas is active.

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Featured researches published by Georgios Balikas.


BMC Bioinformatics | 2015

An overview of the BIOASQ large-scale biomedical semantic indexing and question answering competition

George Tsatsaronis; Georgios Balikas; Prodromos Malakasiotis; Ioannis Partalas; Matthias Zschunke; Michael R. Alvers; Dirk Weissenborn; Anastasia Krithara; Sergios Petridis; Dimitris Polychronopoulos; Yannis Almirantis; John Pavlopoulos; Nicolas Baskiotis; Patrick Gallinari; Thierry Artières; Axel-Cyrille Ngonga Ngomo; Norman Heino; Eric Gaussier; Liliana Barrio-Alvers; Michael Schroeder; Ion Androutsopoulos; Georgios Paliouras

BackgroundThis article provides an overview of the first BioASQ challenge, a competition on large-scale biomedical semantic indexing and question answering (QA), which took place between March and September 2013. BioASQ assesses the ability of systems to semantically index very large numbers of biomedical scientific articles, and to return concise and user-understandable answers to given natural language questions by combining information from biomedical articles and ontologies.ResultsThe 2013 BioASQ competition comprised two tasks, Task 1a and Task 1b. In Task 1a participants were asked to automatically annotate new PubMed documents with MeSH headings. Twelve teams participated in Task 1a, with a total of 46 system runs submitted, and one of the teams performing consistently better than the MTI indexer used by NLM to suggest MeSH headings to curators. Task 1b used benchmark datasets containing 29 development and 282 test English questions, along with gold standard (reference) answers, prepared by a team of biomedical experts from around Europe and participants had to automatically produce answers. Three teams participated in Task 1b, with 11 system runs. The BioASQ infrastructure, including benchmark datasets, evaluation mechanisms, and the results of the participants and baseline methods, is publicly available.ConclusionsA publicly available evaluation infrastructure for biomedical semantic indexing and QA has been developed, which includes benchmark datasets, and can be used to evaluate systems that: assign MeSH headings to published articles or to English questions; retrieve relevant RDF triples from ontologies, relevant articles and snippets from PubMed Central; produce “exact” and paragraph-sized “ideal” answers (summaries). The results of the systems that participated in the 2013 BioASQ competition are promising. In Task 1a one of the systems performed consistently better from the NLM’s MTI indexer. In Task 1b the systems received high scores in the manual evaluation of the “ideal” answers; hence, they produced high quality summaries as answers. Overall, BioASQ helped obtain a unified view of how techniques from text classification, semantic indexing, document and passage retrieval, question answering, and text summarization can be combined to allow biomedical experts to obtain concise, user-understandable answers to questions reflecting their real information needs.


meeting of the association for computational linguistics | 2017

Topical Coherence in LDA-based Models through Induced Segmentation.

Hesam Amoualian; Wei Lu; Eric Gaussier; Georgios Balikas; Massih-Reza Amini; Marianne Clausel

This paper presents an LDA-based model that generates topically coherent segments within documents by jointly segmenting documents and assigning topics to their words. The coherence between topics is ensured through a copula, binding the topics associated to the words of a segment. In addition, this model relies on both document and segment specific topic distributions so as to capture fine grained differences in topic assignments. We show that the proposed model naturally encompasses other state-of-the-art LDA-based models designed for similar tasks. Furthermore, our experiments, conducted on six different publicly available datasets, show the effectiveness of our model in terms of perplexity, Normalized Pointwise Mutual Information, which captures the coherence between the generated topics, and the Micro F1 measure for text classification.


arXiv: Computation and Language | 2016

An empirical study on large scale text classification with skip-gram embeddings.

Georgios Balikas; Massih-Reza Amini


north american chapter of the association for computational linguistics | 2016

TwiSE at SemEval-2016 Task 4: Twitter Sentiment Classification

Georgios Balikas; Massih-Reza Amini


arXiv: Computation and Language | 2017

CAp 2017 challenge: Twitter Named Entity Recognition.

Cédric Lopez; Ioannis Partalas; Georgios Balikas; Nadia Derbas; Amélie Martin; Coralie Reutenauer; Frédérique Segond; Massih-Reza Amini


international conference on computational linguistics | 2016

Modeling topic dependencies in semantically coherent text spans with copulas

Georgios Balikas; Hesam Amoualian; Marianne Clausel; Eric Gaussier; Massih-Reza Amini


arXiv: Computation and Language | 2018

Concurrent Learning of Semantic Relations.

Georgios Balikas; Gaël Dias; Rumen Moraliyski; Massih-Reza Amini


arXiv: Computation and Language | 2018

Lexical Bias In Essay Level Prediction.

Georgios Balikas


meeting of the association for computational linguistics | 2017

TwiSe at SemEval-2017 Task 4: Five-point Twitter Sentiment Classification and Quantification.

Georgios Balikas


arXiv: Computation and Language | 2017

On the effectiveness of feature set augmentation using clusters of word embeddings.

Georgios Balikas; Ioannis Partalas; Massih-Reza Amini

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Massih-Reza Amini

Centre national de la recherche scientifique

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Eric Gaussier

Centre national de la recherche scientifique

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Eric Gaussier

Centre national de la recherche scientifique

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Cédric Lopez

University of Montpellier

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Rohit Babbar

Joseph Fourier University

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