Recommending Scientific Videos based on Metadata Enrichment using Linked Open Data
Justyna Medrek, Christian Otto, Ralph Ewerth

TL;DR
This paper presents a method to improve scientific video recommendations by enriching metadata with linked open data, enhancing semantic similarity measures, and demonstrating effectiveness through a user study.
Contribution
It introduces a novel approach to link automatically generated video metadata to linked open data for better semantic video recommendation.
Findings
Metadata enrichment improves recommendation accuracy
Linked open data enhances semantic similarity measures
User study confirms approach feasibility
Abstract
The amount of available videos in the Web has significantly increased not only for entertainment etc., but also to convey educational or scientific information in an effective way. There are several web portals that offer access to the latter kind of video material. One of them is the TIB AV-Portal of the Leibniz Information Centre for Science and Technology (TIB), which hosts scientific and educational video content. In contrast to other video portals, automatic audiovisual analysis (visual concept classification, optical character recognition, speech recognition) is utilized to enhance metadata information and semantic search. In this paper, we propose to further exploit and enrich this automatically generated information by linking it to the Integrated Authority File (GND) of the German National Library. This information is used to derive a measure to compare the similarity of two…
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