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Scenarios interpretation with prior knowledge
Conference proceeding   Open access   Peer reviewed

Scenarios interpretation with prior knowledge

Alessandro Daniele and L Serafini
AI*IA 2018 Doctoral Consortium: Proceedings of the AI*IA Doctoral Consortium (DC) co-located with the 17th Conference of the Italian Association for Artificial Intelligence (AI*IA 2018), Vol.2249, pp.39-42
CEUR Workshop Proceedings, 2249
AIxIA (Trento, 20/11/2018–23/11/2018)
2018
Handle:
https://hdl.handle.net/10863/51961

Abstract

Formal logic Collective classifications Artificial intelligence Neural network models
Statistical Relational Learning (SRL) deals with relational domains, where the samples are neither independent nor uniformly distributed. Moreover, central to SRL is the integration of logical knowledge in the learning framework. The main tasks in SRL are Collective Classification, Entity Resolution, Link Prediction and Knowledge Graph Completion. In this extended abstract we propose a new supervised learning task called Scenarios Interpretation (SI) where a sample is a Scenario, i.e. a set of (typically few) objects where each object and pair of objects have its own features. The goal is to classify objects and relationships. We propose NIoS (Neural Interpeter of Scenarios), a method for solving SI that is able to inject Prior Knowledge expressed in First Order Logic (FOL) into a neural network model. We implemented a first version and tested it on Visual Relationship Detection task (VRD) showing that NIoS outperformed state of the art systems.
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AIIA-DC2018_paper_8617.03 kBDownloadView
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url
https://ceur-ws.org/Vol-2249/AIIA-DC2018_paper_8.pdfView

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