FeedLens: Polymorphic Lenses for Personalizing Exploratory Search over Knowledge Graphs
Harmanpreet Kaur, Doug Downey, Amanpreet Singh, Evie Yu-Yen Cheng,, Daniel S. Weld, Jonathan Bragg

TL;DR
FeedLens introduces polymorphic lenses that leverage existing preference models to enhance exploratory search over knowledge graphs, enabling users to efficiently explore related entity types and improve literature review experiences.
Contribution
The paper presents FeedLens, a novel system that re-purposes user-curated research feeds as polymorphic lenses for multi-entity exploratory search in knowledge graphs.
Findings
FeedLens increases user engagement in exploratory search tasks.
It reduces cognitive effort during literature reviews.
Users prefer the enhanced search experience provided by FeedLens.
Abstract
The vast scale and open-ended nature of knowledge graphs (KGs) make exploratory search over them cognitively demanding for users. We introduce a new technique, polymorphic lenses, that improves exploratory search over a KG by obtaining new leverage from the existing preference models that KG-based systems maintain for recommending content. The approach is based on a simple but powerful observation: in a KG, preference models can be re-targeted to recommend not only entities of a single base entity type (e.g., papers in the scientific literature KG, products in an e-commerce KG), but also all other types (e.g., authors, conferences, institutions; sellers, buyers). We implement our technique in a novel system, FeedLens, which is built over Semantic Scholar, a production system for navigating the scientific literature KG. FeedLens reuses the existing preference models on Semantic Scholar…
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Taxonomy
MethodsBalanced Selection
