Ioannis Koumarelas, PhD
Ioannis Koumarelas, PhD
Home
Skills
Experience
Accomplishments
Publications
Contact
Light
Dark
Automatic
Knowledge Transfer
Knowledge Transfer for Entity Resolution with Siamese Neural Networks
The integration of multiple data sources is a common problem in a large variety of applications. We propose a deep Siamese neural network, capable of learning a similarity measure that is tailored to the characteristics of a particular dataset. With the properties of deep learning methods, we are able to eliminate the manual feature engineering process and thus considerably reduce the effort required for model construction.
Michael Loster
,
Ioannis Koumarelas
,
Felix Naumann
PDF
Cite
Repeatability
Integrating similarity and dissimilarity notions in recommenders
Collaborative recommenders rely on the assumption that similar users may exhibit similar tastes while content-based ones favour items that found to be similar with the items a user likes. Weak related entities, which are often considered to be useful, are neglected by those similarity-driven recommenders. To take advantage of this neglected information, we introduce a novel dissimilarity-based recommender that bases its estimations on degrees of dissimilarities among items’ attributes.
Christos Zigkolis
,
Savvas Karagiannidis
,
Ioannis Koumarelas
,
Athena Vakali
PDF
Cite
Code
Cite
×