Abstract
In this article, we present an interactive visual information retrieval and recommendation system, called VisIRR, for large-scale document discovery. VisIRR effectively combines the paradigms of (1) a passive pull through query processes for retrieval and (2) an active push that recommends items of potential interest to users based on their preferences. Equipped with an efficient dynamic query interface against a large-scale corpus, VisIRR organizes the retrieved documents into high-level topics and visualizes them in a 2D space, representing the relationships among the topics along with their keyword summary. In addition, based on interactive personalized preference feedback with regard to documents, VisIRR provides document recommendations from the entire corpus, which are beyond the retrieved sets. Such recommended documents are visualized in the same space as the retrieved documents, so that users can seamlessly analyze both existing and newly recommended ones. This article presents novel computational methods, which make these integrated representations and fast interactions possible for a large-scale document corpus. We illustrate how the system works by providing detailed usage scenarios. Additionally, we present preliminary user study results for evaluating the effectiveness of the system.
Original language | English |
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Article number | 8 |
Journal | ACM Transactions on Knowledge Discovery from Data |
Volume | 12 |
Issue number | 1 |
DOIs | |
State | Published - Feb 2018 |
Funding
The work of these authors was supported in part by the National Science Foundation grant CCF-0808863 and and Basic Science Research Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Science, ICT & Future Planning (NRF-2016M3C1B6950000).
Funders | Funder number |
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National Science Foundation | |
Ministry of Science, ICT and Future Planning | NRF-2016M3C1B6950000 |
National Research Foundation of Korea | |
National Science Foundation | CCF-0808863 |
Keywords
- Clustering
- Dimension reduction
- Information retrieval
- Recommendation
- Topic modeling