English

FeedLens: Polymorphic Lenses for Personalizing Exploratory Search over Knowledge Graphs

Human-Computer Interaction 2022-08-17 v1 Information Retrieval

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 -- people's curated research feeds -- as lenses for exploratory search. Semantic Scholar users can curate multiple feeds/lenses for different topics of interest, e.g., one for human-centered AI and another for document embeddings. Although these lenses are defined in terms of papers, FeedLens re-purposes them to also guide search over authors, institutions, venues, etc. Our system design is based on feedback from intended users via two pilot surveys (n=17 and n=13, respectively). We compare FeedLens and Semantic Scholar via a third (within-subjects) user study (n=15) and find that FeedLens increases user engagement while reducing the cognitive effort required to complete a short literature review task. Our qualitative results also highlight people's preference for this more effective exploratory search experience enabled by FeedLens.

Keywords

Cite

@article{arxiv.2208.07531,
  title  = {FeedLens: Polymorphic Lenses for Personalizing Exploratory Search over Knowledge Graphs},
  author = {Harmanpreet Kaur and Doug Downey and Amanpreet Singh and Evie Yu-Yen Cheng and Daniel S. Weld and Jonathan Bragg},
  journal= {arXiv preprint arXiv:2208.07531},
  year   = {2022}
}

Comments

To appear at UIST 2022

R2 v1 2026-06-25T01:43:49.984Z