KGE algorithms

An updated method for link prediction that uses a regularization factor that models relation argument types. Abstract (Kotnis and Nastase, 2017): Learning relations based on evidence from knowledge repositories relies on processing the available relation instances. Knowledge repositories are not ba...

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Bibliographic Details
Main Author: Kotnis, Bhushan (Author)
Format: Database Research Data
Language:English
Published: Heidelberg Universität 2019-08-19
DOI:10.11588/data/CSXYSS
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Online Access:Verlag, kostenfrei, Volltext: https://doi.org/10.11588/data/CSXYSS
Verlag, kostenfrei, Volltext: https://heidata.uni-heidelberg.de/dataset.xhtml?persistentId=doi:10.11588/data/CSXYSS
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Author Notes:Bhushan Kotnis
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Summary:An updated method for link prediction that uses a regularization factor that models relation argument types. Abstract (Kotnis and Nastase, 2017): Learning relations based on evidence from knowledge repositories relies on processing the available relation instances. Knowledge repositories are not balanced in terms of relations or entities – there are relations with less than 10 but also thousands of instances, and entities involved in less than 10 but also thousands of relations. Many relations, however, have clear domain and range, which we hypothesize could help learn a better, more generalizing, model. We include such information in the RESCAL model in the form of a regularization factor added to the loss function that takes into account the types (categories) of the entities that appear as arguments to relations in the knowledge base. Tested on Freebase, a frequently used benchmarking dataset for link/path predicting tasks, we note increased performance compared to the baseline model in terms of mean reciprocal rank and hitsN, N = 1, 3, 10. Furthermore, we discover scenarios that significantly impact the effectiveness of the type regularizer.
Item Description:Kind of data: program source code
Gesehen am 02.09.2019
Physical Description:Online Resource
DOI:10.11588/data/CSXYSS