AbstractUtilizing external collections to improve retrieval performance is challenging research because various test collections are created for different purposes. Improving medical information retrieval has also gained much attention as various types of medical documents have become available to researchers ever since they started storing them in machine processable formats. In this paper, we propose an effective method of utilizing external collections based on the pseudo relevance feedback approach. Our method incorporates the structure of external collections in estimating individual components in the final feedback model. Extensive experiments on three medical collections (TREC CDS, CLEF eHealth, and OHSUMED) were performed, and the r...
Query Expansion using Pseudo Relevance Feedback is a useful and a popular technique for reformulatin...
General search engines are still far from being effective in addressing complex consumer health quer...
Information Retrieval focuses on finding documents whose content matches with a user query from a la...
Abstract. This paper presents the first participation of the ERIAS team in task 3 of the ShARe/CLEF ...
Dealing with the medical terminology is a challenge when searching for patients based on the relevan...
Many users’ queries contain references to named entities, and this is particularly true in the medic...
AbstractImproving the retrieval accuracy of MEDLINE documents is still a challenging issue due to lo...
One of the challenges in medical information retrieval is the terminology gap between the documents ...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
This paper presents the details of participation of DEMIR (Dokuz Eylül University Multimedia Informa...
This paper evaluates the retrieval effectiveness of query expansion strategies on a MEDLINE test col...
Information retrieval algorithms leverage various collection statistics to improve performance. Beca...
Abstract In recent years, information retrieval technology is widely used in the medical industry. H...
A persisting challenge in the field of information retrieval is the vocabulary mismatch between a us...
In this work we wanted to compare and analyze a variety of approaches in the task of Medical Public...
Query Expansion using Pseudo Relevance Feedback is a useful and a popular technique for reformulatin...
General search engines are still far from being effective in addressing complex consumer health quer...
Information Retrieval focuses on finding documents whose content matches with a user query from a la...
Abstract. This paper presents the first participation of the ERIAS team in task 3 of the ShARe/CLEF ...
Dealing with the medical terminology is a challenge when searching for patients based on the relevan...
Many users’ queries contain references to named entities, and this is particularly true in the medic...
AbstractImproving the retrieval accuracy of MEDLINE documents is still a challenging issue due to lo...
One of the challenges in medical information retrieval is the terminology gap between the documents ...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
This paper presents the details of participation of DEMIR (Dokuz Eylül University Multimedia Informa...
This paper evaluates the retrieval effectiveness of query expansion strategies on a MEDLINE test col...
Information retrieval algorithms leverage various collection statistics to improve performance. Beca...
Abstract In recent years, information retrieval technology is widely used in the medical industry. H...
A persisting challenge in the field of information retrieval is the vocabulary mismatch between a us...
In this work we wanted to compare and analyze a variety of approaches in the task of Medical Public...
Query Expansion using Pseudo Relevance Feedback is a useful and a popular technique for reformulatin...
General search engines are still far from being effective in addressing complex consumer health quer...
Information Retrieval focuses on finding documents whose content matches with a user query from a la...