IRAIJul 3, 2023

OpenSiteRec: An Open Dataset for Site Recommendation

Tsinghua
arXiv:2307.00856v11 citationsh-index: 32
Originality Synthesis-oriented
AI Analysis

This provides a dataset to facilitate research on site recommendation for brands and institutions, but it is incremental as it primarily addresses a data gap rather than introducing new methods.

The authors tackled the lack of a public dataset for site recommendation by collecting and releasing OpenSiteRec, a comprehensive dataset covering four international metropolises, and conducted benchmarking experiments with existing recommendation models to evaluate performance.

As a representative information retrieval task, site recommendation, which aims at predicting the optimal sites for a brand or an institution to open new branches in an automatic data-driven way, is beneficial and crucial for brand development in modern business. However, there is no publicly available dataset so far and most existing approaches are limited to an extremely small scope of brands, which seriously hinders the research on site recommendation. Therefore, we collect, construct and release an open comprehensive dataset, namely OpenSiteRec, to facilitate and promote the research on site recommendation. Specifically, OpenSiteRec leverages a heterogeneous graph schema to represent various types of real-world entities and relations in four international metropolises. To evaluate the performance of the existing general methods on the site recommendation task, we conduct benchmarking experiments of several representative recommendation models on OpenSiteRec. Furthermore, we also highlight the potential application directions to demonstrate the wide applicability of OpenSiteRec. We believe that our OpenSiteRec dataset is significant and anticipated to encourage the development of advanced methods for site recommendation. OpenSiteRec is available online at https://OpenSiteRec.github.io/.

Foundations

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