Kontonatsios and Sophia Ananiadou Background: Identifying relevant studies for inclusion in a systematic review (i.e. screening) is a complex, laborious and expensive task. Recently, a number of studies has shown that the use of machine learning and text mining methods to automatically identify relevant studies has the potential to drastically decrease the workload involved in the screening phase. The vast majority of these machine learning methods exploit the same underlying principle, i.e. a study is modelled as a bag-of-words (BOW). Methods: We explore the use of topic modelling methods to derive a more informative representation of studies. We apply Latent Dirichlet allocation (LDA), an unsupervised topic modelling approach, to automati...
AbstractSystematic reviews require expert reviewers to manually screen thousands of citations in ord...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
Abstract Background Identifying relevant studies for inclusion in a systematic review (i.e. screenin...
Background: Despite existing research on text mining and machine learning for title...
Systematic Literature Review (SLR) is nowadays a challenging task due to the large number of papers ...
AbstractSystematic reviews require expert reviewers to manually screen thousands of citations in ord...
AbstractObjectiveTo determine whether SVM-based classifiers, which are trained on a combination of i...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
BACKGROUND: The importance of systematic reviews in collating and summarising available research out...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Abstract Background Systematic reviews address a specific clinical question by unbiasedly assessing ...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
AbstractSystematic reviews require expert reviewers to manually screen thousands of citations in ord...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
Abstract Background Identifying relevant studies for inclusion in a systematic review (i.e. screenin...
Background: Despite existing research on text mining and machine learning for title...
Systematic Literature Review (SLR) is nowadays a challenging task due to the large number of papers ...
AbstractSystematic reviews require expert reviewers to manually screen thousands of citations in ord...
AbstractObjectiveTo determine whether SVM-based classifiers, which are trained on a combination of i...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
BACKGROUND: The importance of systematic reviews in collating and summarising available research out...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
Abstract Background Systematic reviews address a specific clinical question by unbiasedly assessing ...
Systematic reviews require expert reviewers to manually screen thousands of citations in order to id...
AbstractSystematic reviews require expert reviewers to manually screen thousands of citations in ord...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...
Topic modeling is a type of statistical model for discovering the latent "topics" that occur in a co...