AbstractThe discovery of implicit connections between terms that do not occur together in any scientific document underlies the model of literature-based knowledge discovery first proposed by Swanson. Corpus-derived statistical models of semantic distance such as Latent Semantic Analysis (LSA) have been evaluated previously as methods for the discovery of such implicit connections. However, LSA in particular is dependent on a computationally demanding method of dimension reduction as a means to obtain meaningful indirect inference, limiting its ability to scale to large text corpora. In this paper, we evaluate the ability of Random Indexing (RI), a scalable distributional model of word associations, to draw meaningful implicit relationships...
AbstractOver the past 15 years, a range of methods have been developed that are able to learn human-...
AbstractPharmacovigilance involves continually monitoring drug safety after drugs are put to market....
Many manual biomedical annotation tasks can be categorized as instances of the typical multi-label c...
AbstractThe discovery of implicit connections between terms that do not occur together in any scient...
We report experiments that use lexical statistics, such as word frequency counts, to discover hidden...
Latent semantic indexing (LSI) is a statistical technique for improving information retrieval effect...
AbstractThe rapid growth of biomedical literature is evident in the increasing size of the MEDLINE r...
AbstractIn this paper we utilize methods of hyperdimensional computing to mediate the identification...
BackgroundLiterature based discovery (LBD) automatically infers missed connections between concepts ...
This paper evaluates the efficiency of a number of popular corpus-based distributional models in per...
The problem of inferring novel knowledge from implicit facts by logically connecting independent fra...
AbstractThe explosive growth in biomedical literature has made it difficult for researchers to keep ...
Objective Literature-based discovery (LBD) aims to identify “hidden knowledge” in the medical litera...
AbstractLatent semantic indexing (LSI) is an information retrieval technique based on the spectral a...
Objective Literature-based discovery (LBD) aims to identify “hidden knowledge” in the medical litera...
AbstractOver the past 15 years, a range of methods have been developed that are able to learn human-...
AbstractPharmacovigilance involves continually monitoring drug safety after drugs are put to market....
Many manual biomedical annotation tasks can be categorized as instances of the typical multi-label c...
AbstractThe discovery of implicit connections between terms that do not occur together in any scient...
We report experiments that use lexical statistics, such as word frequency counts, to discover hidden...
Latent semantic indexing (LSI) is a statistical technique for improving information retrieval effect...
AbstractThe rapid growth of biomedical literature is evident in the increasing size of the MEDLINE r...
AbstractIn this paper we utilize methods of hyperdimensional computing to mediate the identification...
BackgroundLiterature based discovery (LBD) automatically infers missed connections between concepts ...
This paper evaluates the efficiency of a number of popular corpus-based distributional models in per...
The problem of inferring novel knowledge from implicit facts by logically connecting independent fra...
AbstractThe explosive growth in biomedical literature has made it difficult for researchers to keep ...
Objective Literature-based discovery (LBD) aims to identify “hidden knowledge” in the medical litera...
AbstractLatent semantic indexing (LSI) is an information retrieval technique based on the spectral a...
Objective Literature-based discovery (LBD) aims to identify “hidden knowledge” in the medical litera...
AbstractOver the past 15 years, a range of methods have been developed that are able to learn human-...
AbstractPharmacovigilance involves continually monitoring drug safety after drugs are put to market....
Many manual biomedical annotation tasks can be categorized as instances of the typical multi-label c...