14 results on '"Mons, B. (Barend)"'
Search Results
2. The FAIR Guiding Principles for scientific data management and stewardship
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Wilkinson, J.M. (Mark), Dumontier, M. (Michel), Aalbersberg, I.J. (Ijsbrand Jan), Appleton, G. (Gabrielle), Axton, M. (Myles), Baak, A. (Arie), Blomberg, N. (Niklas), Boiten, J.W. (Jan-Willem), Silva Santos, L.B. (Luiz Bonino) da, Bourne, P.E. (Philip), Bouwman, J. (Jildau), Brookes, A.J. (Anthony), Clark, T. (Tim), Crosas, M. (Mercè), Dillo, I. (Ingrid), Dumon, O. (Olivier), Edmunts, S. (Scott), Evelo, C.T. (Chris), Finkers, R. (Richard), Gonzalez-Beltran, A. (Alejandra), Gray, A. (Alastair), Groth, P. (Paul), Goble, C.A. (Carole Ann), Grethe, S. (Jeffrey), Heringa, J. (Jaap), Hoen, P.A.C. (Peter) 't, Hooft, R. (Rob), Kuhn, T. (Tobias), Kok, R. (Ruben), Kok, J. (Joost), Lusher, S.J. (Scott), Martone, M.E. (Maryann), Mons, A. (Albert), Packer, A. (Abel), Persson, B. (Bengt), Roca-Serra, P. (Philippe), Roos, M. (Marco), Schaik, R. (Rene) van, Sansone, S.A. (Susanna-Assunta), Schultes, E. (Erik), Sengstag, T. (Thierry), Slater, T. (Ted), Strawn, G. (George), Swertz, M. (Morris), Thompson, M. (Mark), Lei, J. (Johan) van der, Mulligen, E.M. (Erik) van, Velterop, J. (Jan), Waagmeester, A. (Andra), Wittenburg, P. (Peter), Wolstencroft, K. (Katherine), Zhao, J. (Jun), Mons, B. (Barend), Wilkinson, J.M. (Mark), Dumontier, M. (Michel), Aalbersberg, I.J. (Ijsbrand Jan), Appleton, G. (Gabrielle), Axton, M. (Myles), Baak, A. (Arie), Blomberg, N. (Niklas), Boiten, J.W. (Jan-Willem), Silva Santos, L.B. (Luiz Bonino) da, Bourne, P.E. (Philip), Bouwman, J. (Jildau), Brookes, A.J. (Anthony), Clark, T. (Tim), Crosas, M. (Mercè), Dillo, I. (Ingrid), Dumon, O. (Olivier), Edmunts, S. (Scott), Evelo, C.T. (Chris), Finkers, R. (Richard), Gonzalez-Beltran, A. (Alejandra), Gray, A. (Alastair), Groth, P. (Paul), Goble, C.A. (Carole Ann), Grethe, S. (Jeffrey), Heringa, J. (Jaap), Hoen, P.A.C. (Peter) 't, Hooft, R. (Rob), Kuhn, T. (Tobias), Kok, R. (Ruben), Kok, J. (Joost), Lusher, S.J. (Scott), Martone, M.E. (Maryann), Mons, A. (Albert), Packer, A. (Abel), Persson, B. (Bengt), Roca-Serra, P. (Philippe), Roos, M. (Marco), Schaik, R. (Rene) van, Sansone, S.A. (Susanna-Assunta), Schultes, E. (Erik), Sengstag, T. (Thierry), Slater, T. (Ted), Strawn, G. (George), Swertz, M. (Morris), Thompson, M. (Mark), Lei, J. (Johan) van der, Mulligen, E.M. (Erik) van, Velterop, J. (Jan), Waagmeester, A. (Andra), Wittenburg, P. (Peter), Wolstencroft, K. (Katherine), Zhao, J. (Jun), and Mons, B. (Barend)
- Abstract
There is an urgent need to improve the infrastructure supporting the reuse of scholarly data. A diverse set of stakeholders—representing academia, industry, funding agencies, and scholarly publishers—have come together to design and jointly endorse a concise and measureable set of principles that we refer to as the FAIR Data Principles. The intent is that these may act as a guideline for those wishing to enhance the reusability of their data holdings. Distinct from peer initiatives that focus on the human scholar, the FAIR Principles put specific emphasis on enhancing the ability of machines to automatically find and use the data, in addition to supporting its reuse by individuals. This Comment is the first formal publication of the FAIR Principles, and includes the rationale behind them, and some exemplar implementations in the community.
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- 2016
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3. The implicitome: A resource for rationalizing gene-disease associations
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Hettne, K.M. (Kristina), Thompson, M. (Mark), Haagen, H.H.H.B.M. (Herman) van, Van Der Horst, E. (Eelke), Kaliyaperumal, R. (Rajaram), Mina, E. (Eleni), Tatum, Z. (Zuotian), Laros, J.F.J. (Jeroen F.), Van Mulligen, E.M. (Erik M.), Schuemie, M.J. (Martijn), Emmelien, A. (Aten), Li, T.S. (Tong Shu), Bruskiewich, R. (Richard), Good, B.M. (Benjamin M.), Su, A.I. (Andrew I.), Kors, J.A. (Jan), Dunnen, J.T. (Johan) den, Van Ommen, G.-J.B. (Gert-Jan B.), Roos, M. (Marco), Hoen, P.A.C. (Peter) 't, Mons, B. (Barend), Schultes, E. (Erik), Hettne, K.M. (Kristina), Thompson, M. (Mark), Haagen, H.H.H.B.M. (Herman) van, Van Der Horst, E. (Eelke), Kaliyaperumal, R. (Rajaram), Mina, E. (Eleni), Tatum, Z. (Zuotian), Laros, J.F.J. (Jeroen F.), Van Mulligen, E.M. (Erik M.), Schuemie, M.J. (Martijn), Emmelien, A. (Aten), Li, T.S. (Tong Shu), Bruskiewich, R. (Richard), Good, B.M. (Benjamin M.), Su, A.I. (Andrew I.), Kors, J.A. (Jan), Dunnen, J.T. (Johan) den, Van Ommen, G.-J.B. (Gert-Jan B.), Roos, M. (Marco), Hoen, P.A.C. (Peter) 't, Mons, B. (Barend), and Schultes, E. (Erik)
- Abstract
High-throughput experimental methods such as medical sequencing and genome-wide association studies (GWAS) identify increasingly large numbers of potential relations between genetic variants and diseases. Both biological complexity (millions of potential gene-disease associations) and the accelerating rate of data production necessitate computational approaches to prioritize and rationalize potential gene-disease relations. Here, we use concept profile technology to expose from the biomedical literature both explicitly stated gene-disease relations (the explicitome) and a much larger set of implied gene-disease associations (the implicitome). Implicit relations are largely unknown to, or are even unintended by the original authors, but they vastly extend the reach of existing b
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- 2016
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4. Repository of mutations from Oman: The entry point to a national mutation database [version 1; referees: 2 approved]
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Rajab, A. (Anna), Hamza, N. (Nishath), Al Harasi, S. (Salma), Al Lawati, F. (Fatma), Gibbons, U. (Una), Al Alawi, I. (Intesar), Kobus, K. (Karoline), Hassan, S. (Suha), Mahir, G. (Ghariba), Al Salmi, Q. (Qasim), Mons, B. (Barend), Robinson, P. (Peter), Rajab, A. (Anna), Hamza, N. (Nishath), Al Harasi, S. (Salma), Al Lawati, F. (Fatma), Gibbons, U. (Una), Al Alawi, I. (Intesar), Kobus, K. (Karoline), Hassan, S. (Suha), Mahir, G. (Ghariba), Al Salmi, Q. (Qasim), Mons, B. (Barend), and Robinson, P. (Peter)
- Abstract
The Sultanate of Oman is a rapidly developing Muslim country with well-organized government-funded health care services, and expanding medical genetic facilities. The preservation of tribal structures within the Omani population coupled with geographical isolation has produced unique patterns of rare mutations. In order to provide diagnosticians and researchers with access to an up-to-date resource that will assist them in their daily practice we collated and analyzed all of the Mendelian disease-associated mutations identified in the Omani population. By the 1st of August 2015, the dataset contained 300 mutations detected in over 150 different genes. More than half of the data collected reflect novel genetic variations that were first described in the Omani population, and most disorders with known mutations are inherited in an autosomal recessive fashion. A number of novel Mendelian disease genes have been discovered in Omani nationals, and the corresponding mutations are included here. The current study provides a comprehensive resource of the mutations in the Omani population published in scientific literature or reported through service provision that will be useful for genetic care in Oman and will be a starting point for variation databases as next-generation sequencing technologies are introduced into genetic medicine in Oman.
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- 2015
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5. Novel protein-protein interactions inferred from literature context
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Haagen, H.H.H.B.M. (Herman) van, Hoen, P.A.C. (Peter) 't, Bovo, A.B., Morrée, A. (Antoine) de, Mulligen, E.M. (Erik) van, Chichester, C. (Christine), Kors, J.A. (Jan), Dunnen, J.T. (Johan) den, Ommen, G.J.B. van, Maarel, S.M. (Silvère) van der, Kern, V.M., Mons, B. (Barend), Schuemie, M.J. (Martijn), Haagen, H.H.H.B.M. (Herman) van, Hoen, P.A.C. (Peter) 't, Bovo, A.B., Morrée, A. (Antoine) de, Mulligen, E.M. (Erik) van, Chichester, C. (Christine), Kors, J.A. (Jan), Dunnen, J.T. (Johan) den, Ommen, G.J.B. van, Maarel, S.M. (Silvère) van der, Kern, V.M., Mons, B. (Barend), and Schuemie, M.J. (Martijn)
- Abstract
We have developed a method that predicts Protein-Protein Interactions (PPIs) based on the similarity of the context in which proteins appear in literature. This method outperforms previously developed PPI prediction algorithms that rely on the conjunction of two protein names in MEDLINE abstracts. We show significant increases in coverage (76% versus 32%) and sensitivity (66% versus 41% at a specificity of 95%) for the prediction of PPIs currently archived in 6 PPI databases. A retrospective analysis shows that PPIs can efficiently be predicted before they enter PPI databases and before their interaction is explicitly described in the literature. The practical value of the method for discovery of novel PPIs is illustrated by the experimental confirmation of the inferred physical interaction between CAPN3 and PARVB, which was based on frequent co-occurrence of both proteins with concepts like Z-disc, dysferlin, and alpha-actinin. The relationships between proteins predicted by our method are broader than PPIs, and include proteins in the same complex or pathway. Dependent on the type of relationships deemed useful, the precision of our method can be as high as 90%. The full set of predicted interactions is available in a downloadable matrix and through the webtool Nermal, which lists the most likely interaction partners for a given protein. Our framework can be used for prioritizing potential interaction partners, hitherto undiscovered, for follow-up studies and to aid the generation of accurate protein interaction maps.
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- 2009
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6. Literature-aided meta-analysis of microarray data: A compendium study on muscle development and disease
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Jelier, R. (Rob), Hoen, P.A.C. (Peter) 't, Sterrenburg, E. (Ellen), Dunnen, J.T. (Johan) den, Ommen, G.J. (Gert) van, Kors, J.A. (Jan), Mons, B. (Barend), Jelier, R. (Rob), Hoen, P.A.C. (Peter) 't, Sterrenburg, E. (Ellen), Dunnen, J.T. (Johan) den, Ommen, G.J. (Gert) van, Kors, J.A. (Jan), and Mons, B. (Barend)
- Abstract
Background: Comparative analysis of expression microarray studies is difficult due to the large influence of technical factors on experimental outcome. Still, the identified differentially expressed genes may hint at the same biological processes. However, manually curated assignment of genes to biological processes, such as pursued by the Gene Ontology (GO) consortium, is incomplete and limited. We hypothesised that automatic association of genes with biological processes through thesaurus-controlled mining of Medline abstracts would be more effective. Therefore, we developed a novel algorithm (LAMA: Literature-Aided Meta-Analysis) to quantify the similarity between transcriptomics studies. We evaluated our algorithm on a large compendium of 102 microarray studies published in the field of muscle development and disease, and compared it to similarity measures based on gene overlap and over-representation of biological processes assigned by GO. Results: While the overlap in both genes and overrepresented GO-terms was poor, LAMA retrieved many more biologically meaningful links between studies, with substantially lower influence of technical factors. LAMA correctly grouped muscular dystrophy, regeneration and myositis studies, and linked patient and corresponding mouse model studies. LAMA also retrieves the connecting biological concepts. Among other new discoveries, we associated cullin proteins, a class of ubiquitinylation proteins, with genes down-regulated during muscle regeneration, whereas ubiquitinylation was previously reported to be activated during the inverse process: muscle atrophy. Conclusion: Our literature-based association analysis is capable of finding hidden common biological denominators in microarray studies, and circumvents the need for raw data analysis or curated gene annotation databases.
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- 2008
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7. Calling on a million minds for community annotation in WikiProteins
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Mons, B. (Barend), Ashburner, M. (Michael), Chichester, C. (Christine), Mulligen, E.M. (Erik) van, Weeber, M. (Marc), Dunnen, J.T. (Johan) den, Ommen, G.J. (Gert) van, Musen, M. (Mark), Cockerill, M. (Matthew), Hermjakob, H. (Henning), Packer, A. (Abel), Pacheco, R. (Roberto), Lewis, S. (Suzan), Berkeley, A. (Alfred), Melton, W. (William), Barris, N. (Nickolas), Wales, J. (Jimmy), Meijssen, G. (Gerard), Moeller, E. (Erik), Roes, P.J., Borner, K. (Katy), Bairoch, A. (Amos), Mons, B. (Barend), Ashburner, M. (Michael), Chichester, C. (Christine), Mulligen, E.M. (Erik) van, Weeber, M. (Marc), Dunnen, J.T. (Johan) den, Ommen, G.J. (Gert) van, Musen, M. (Mark), Cockerill, M. (Matthew), Hermjakob, H. (Henning), Packer, A. (Abel), Pacheco, R. (Roberto), Lewis, S. (Suzan), Berkeley, A. (Alfred), Melton, W. (William), Barris, N. (Nickolas), Wales, J. (Jimmy), Meijssen, G. (Gerard), Moeller, E. (Erik), Roes, P.J., Borner, K. (Katy), and Bairoch, A. (Amos)
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WikiProteins enables community annotation in a Wiki-based system. Extracts of major data sources have been fused into an editable environment that links out to the original sources. Data from community edits create automatic copies of the original data. Semantic technology captures concepts co-occurring in one sentence and thus potential factual statements. In addition, indirect associations between concepts have been calculated. We call on a 'million minds' to annotate a 'million concepts' and to collect facts from the literature with the reward of collaborative knowledge discovery. The system is available for beta testing at http://www.wikiprofessional.org. A preview of the version highlighted by WikiProfessional is available at: http://conceptweblinker.wikiprofessional.org/default.py?url= nph-proxy.cgi/010000A/http/genomebiology.com/2008/9/5/R89
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- 2008
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8. Text-derived concept profiles support assessment of DNA microarray data for acute myeloid leukemia and for androgen receptor stimulation
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Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Wouters, B.J. (Bas), Hendriksen, P.J.M. (Peter), Mons, B. (Barend), Delwel, H.R. (Ruud), Kors, J.A. (Jan), Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Wouters, B.J. (Bas), Hendriksen, P.J.M. (Peter), Mons, B. (Barend), Delwel, H.R. (Ruud), and Kors, J.A. (Jan)
- Abstract
Background: High-throughput experiments, such as with DNA microarrays, typically result in hundreds of genes potentially relevant to the process under study, render
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- 2007
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9. Which gene did you mean?
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Mons, B. (Barend) and Mons, B. (Barend)
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Computational Biology needs computer-readable information records. Increasingly, meta-analysed and pre-digested information is being used in the follow up of high throughput experiments and other investigations that yield massive data sets. Semantic enrichment of plain text is crucial for computer aided analysis. In general people will think about semantic tagging as just another form of text mining, and that term has quite a negative connotation in the minds of some biologists who have been disappointed by classical approaches of text mining. Efforts so far have tried to develop tools and technologies that retrospectively extract the correct information from text, which is usually full of ambiguities. Although remarkable results have been obtained in experimental circumstances, the wide spread use of information mining tools is lagging behind earlier expectations. This commentary proposes to make semantic tagging an integral process to electronic publishing.
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- 2005
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10. Thesaurus-based disambiguation of gene symbols.
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Schijvenaars, R.J.A. (Bob), Mons, B. (Barend), Weeber, M. (Marc), Schuemie, M.J. (Martijn), Mulligen, E.M. (Erik) van, Wain, H.M. (Hester), Kors, J.A. (Jan), Schijvenaars, R.J.A. (Bob), Mons, B. (Barend), Weeber, M. (Marc), Schuemie, M.J. (Martijn), Mulligen, E.M. (Erik) van, Wain, H.M. (Hester), and Kors, J.A. (Jan)
- Abstract
BACKGROUND: Massive text mining of the biological literature holds great promise of relating disparate information and discovering new knowledge. However, disambiguation of gene symbols is a major bottleneck. RESULTS: We developed a simple thesaurus-based disambiguation algorithm that can operate with very little training data. The thesaurus comprises the information from five human genetic databases and MeSH. The extent of the homonym problem for human gene symbols is shown to be substantial (33% of the genes in our combined thesaurus had one or more ambiguous symbols), not only because one symbol can refer to multiple genes, but also because a gene symbol can have many non-gene meanings. A test set of 52,529 Medline abstracts, containing 690 ambiguous human gene symbols taken from OMIM, was automatically generated. Overall accuracy of the disambiguation algorithm was up to 92.7% on the test set. CONCLUSION: The ambiguity of human gene symbols is substantial, not only because one symbol may denote multiple genes but particularly because many symbols have other, non-gene meanings. The proposed disambiguation approach resolves most ambiguities in our test set with high accuracy, including
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- 2005
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11. Co-occurrence based meta-analysis of scientific texts: retrieving biological relationships between genes
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Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Eijk, C.C. (Christiaan) van der, Mulligen, E.M. (Erik) van, Mons, B. (Barend), Kors, J.A. (Jan), Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Eijk, C.C. (Christiaan) van der, Mulligen, E.M. (Erik) van, Mons, B. (Barend), and Kors, J.A. (Jan)
- Abstract
MOTIVATION: The advent of high-throughput experiments in molecular biology creates a need for methods to efficiently extract and use information for large numbers of genes. Recently, the associative concept space (ACS) has been developed for the representation of information extracted from biomedical literature. The ACS is a Euclidean space in which thesaurus concepts are positioned and the distances between concepts indicates their relatedness. The ACS uses co-occurrence of concepts as a source of information. In this paper we evaluate how well the system can retrieve functionally related genes and we compare its performance with a simple gene co-occurrence method. RESULTS: To assess the performance of the ACS we composed a test set of five groups of functionally related genes. With the ACS good scores were obtained for four of the five groups. When compared to the gene co-occurrence method, the ACS is capable of revealing more functional biological relations and can achieve results with less literature available per gene. Hierarchical clustering was performed on the ACS output, as a potential aid to users, and was found to provide useful clusters. Our results suggest that the algorithm can be of value for researchers studying large numbers of genes. AVAILABILITY: The ACS program is available upon request from the authors.
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- 2005
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12. Mining microarray datasets aided by knowledge stored in literature
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Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Mulligen, E.M. (Erik) van, Mons, B. (Barend), Kors, J.A. (Jan), Jelier, R. (Rob), Jenster, G.W. (Guido), Dorssers, L.C.J. (Lambert), Mulligen, E.M. (Erik) van, Mons, B. (Barend), and Kors, J.A. (Jan)
- Abstract
DNA microarray technology produces large amounts of data. For data mining of these datasets, background information on genes can be helpful. Unfortunately most information is stored in free text. Here, we present an approach to use this information for DNA microarray data mining.
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- 2003
13. Using contextual queries
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Schijvenaars, R.J.A. (Bob), Diwersy, M., Weeber, M. (Marc), Eijk, C.C. (Christiaan) van der, Jelier, R. (Rob), Mons, B. (Barend), Kors, J.A. (Jan), Mulligen, E.M. (Erik) van, Schijvenaars, R.J.A. (Bob), Diwersy, M., Weeber, M. (Marc), Eijk, C.C. (Christiaan) van der, Jelier, R. (Rob), Mons, B. (Barend), Kors, J.A. (Jan), and Mulligen, E.M. (Erik) van
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Search engines generally treat search requests in isolation. The results for a given query are identical, independent of the user, or the context in which the user made the request. An approach is demonstrated that explores implicit contexts as obtained from a document the user is reading. The approach inserts into an original (web) document functionality to directly activate context driven queries that yield related articles obtained from various information sources.
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- 2003
14. Facilitating networks of information
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Mulligen, E.M. (Erik) van, Diwersy, M., Schmidt, M.E. (Marie), Buurman, H., Mons, B. (Barend), Mulligen, E.M. (Erik) van, Diwersy, M., Schmidt, M.E. (Marie), Buurman, H., and Mons, B. (Barend)
- Abstract
In this paper we describe an approach to respond to a request for information with the identification and location of the appropriate person as a source of information for answering the question. The expertise of a person is characterized using a weighted profile that has been derived from a series of documents describing the expert's activities. Having these profiles, requests for information can be matched with these profiles. The best matches correspond with the people that are experts for providing information on the request.
- Published
- 2000
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