Abstract. The paper presents the experiments carried out as part of the participation in the pilot task of Biomedical about Alzheimer for QA4MRE at CLEF 2012. We have submitted total five unique runs in the pilot task. One run uses Term Frequency (TF) of the query words to weight the sentence. Two runs use Term Frequency-Inverted Document Frequency (TF-IDF) of the query words to weight the sentences. The two unique runs differ in the way that when multiple answers get the same scores by our system, we choose the different answer in the different runs. The last two runs use TF or TF-IDF weighting scheme as well as the OMIM terms about Alzheimer for query expansion. Stopwords are removed from the query words and answers. Each sentence in the ...
[[abstract]]Modern life science which can be applied to many fields, such as drug discovery, pharmac...
The TREC 2018 Precision Medicine Track largely repeats the structure and evaluation of the 2017 trac...
Objective The authors present a system developed for the Challenge in Natural Language Processing fo...
Abstract. This report describes the task Machine reading of biomedical texts about Alzheimer’s disea...
Abstract. For the machine-reading task of biomedical texts about the Alz-heimer disease we have used...
process of extracting patterns from large data sets by combining methods from statistics and artific...
In recent years the amount of experimental data that is produced in biomedical research and the numb...
<p>The number of literature collected for each cardiovascular disease. These literature was filtered...
Text mining is one of the technologies designed to improve the quality of clinical medicine servic...
The peer-reviewed articles and textual data are main source of data in biology. Text mining is solut...
There is a limited evaluation of an independent linguistic battery for early diagnosis of Mild Cogni...
Biomedical literature is increasing day by day. The present scenario shows that the volume of litera...
Objective: We present a system developed for the Challenge in Natural Language Processing for Clinic...
Text mining is defined by Hearst (1999) as the automatic discovery of new, previously unknown, infor...
The biomedical literature constitutes a rich source of evidence tosupport the discovery of biomarker...
[[abstract]]Modern life science which can be applied to many fields, such as drug discovery, pharmac...
The TREC 2018 Precision Medicine Track largely repeats the structure and evaluation of the 2017 trac...
Objective The authors present a system developed for the Challenge in Natural Language Processing fo...
Abstract. This report describes the task Machine reading of biomedical texts about Alzheimer’s disea...
Abstract. For the machine-reading task of biomedical texts about the Alz-heimer disease we have used...
process of extracting patterns from large data sets by combining methods from statistics and artific...
In recent years the amount of experimental data that is produced in biomedical research and the numb...
<p>The number of literature collected for each cardiovascular disease. These literature was filtered...
Text mining is one of the technologies designed to improve the quality of clinical medicine servic...
The peer-reviewed articles and textual data are main source of data in biology. Text mining is solut...
There is a limited evaluation of an independent linguistic battery for early diagnosis of Mild Cogni...
Biomedical literature is increasing day by day. The present scenario shows that the volume of litera...
Objective: We present a system developed for the Challenge in Natural Language Processing for Clinic...
Text mining is defined by Hearst (1999) as the automatic discovery of new, previously unknown, infor...
The biomedical literature constitutes a rich source of evidence tosupport the discovery of biomarker...
[[abstract]]Modern life science which can be applied to many fields, such as drug discovery, pharmac...
The TREC 2018 Precision Medicine Track largely repeats the structure and evaluation of the 2017 trac...
Objective The authors present a system developed for the Challenge in Natural Language Processing fo...