Searching medical literature for synthesis in a systematic review is a complex and labour intensive task. In this context, expert searchers construct lengthy Boolean queries. The universe of possible query variations can be massive: a single query can be composed of hundreds of field-restricted search terms/phrases or ontological concepts, each grouped by a logical operator nested to depths of sometimes five or more levels deep. With the many choices about how to construct a query, it is difficult to both formulate and recognise effective queries. To address this challenge, automatic methods have recently been explored for generating and selecting effective Boolean query variations for systematic reviews. The limiting factor of these method...
Introduction: Systematic reviews aim to find and synthesize all relevant research as a basis for evi...
We consider the problem of efficiently sampling Web search engine query results. In turn, using a sm...
Traditional Learning to Rank models optimize a single ranking function for all available queries. Th...
Systematic reviews form the cornerstone of evidence based medicine, aiming to answer complex medical...
BACKGROUND: The process of constructing a systematic review, a document that compiles the published ...
Formulating Boolean queries for systematic review literature search is a challenging task. Commonly,...
Identifying relevant studies for inclusion in systematic reviews requires significant effort from hu...
© 2012 Dr. Stefan PohlEvidence-based medicine seeks to base clinical decisions on the best currently...
Searching for relevant documents is a laborious task involved in preparing systematic reviews of bio...
Objective Systematic reviews are important in health care but are expensive to produce and maintain...
When conducting systematic reviews, medical researchers heavily deliberate over the final query to p...
Learning to rank has become a popular approach to build a ranking model for Web search recently. Bas...
Clinical systematic reviews are based on expert, laborious search of well-annotated literature. Bool...
OBJECTIVES To maximize the proportion of relevant studies identified for inclusion in systematic rev...
Abstract—Many online or local data sources provide powerful querying mechanisms but limited ranking ...
Introduction: Systematic reviews aim to find and synthesize all relevant research as a basis for evi...
We consider the problem of efficiently sampling Web search engine query results. In turn, using a sm...
Traditional Learning to Rank models optimize a single ranking function for all available queries. Th...
Systematic reviews form the cornerstone of evidence based medicine, aiming to answer complex medical...
BACKGROUND: The process of constructing a systematic review, a document that compiles the published ...
Formulating Boolean queries for systematic review literature search is a challenging task. Commonly,...
Identifying relevant studies for inclusion in systematic reviews requires significant effort from hu...
© 2012 Dr. Stefan PohlEvidence-based medicine seeks to base clinical decisions on the best currently...
Searching for relevant documents is a laborious task involved in preparing systematic reviews of bio...
Objective Systematic reviews are important in health care but are expensive to produce and maintain...
When conducting systematic reviews, medical researchers heavily deliberate over the final query to p...
Learning to rank has become a popular approach to build a ranking model for Web search recently. Bas...
Clinical systematic reviews are based on expert, laborious search of well-annotated literature. Bool...
OBJECTIVES To maximize the proportion of relevant studies identified for inclusion in systematic rev...
Abstract—Many online or local data sources provide powerful querying mechanisms but limited ranking ...
Introduction: Systematic reviews aim to find and synthesize all relevant research as a basis for evi...
We consider the problem of efficiently sampling Web search engine query results. In turn, using a sm...
Traditional Learning to Rank models optimize a single ranking function for all available queries. Th...