Exploring the Impact of Negative Sampling on Patent Citation Recommendation

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Date
2023
Volume
Issue
Journal
Series Titel
Book Title
Proceedings of the 4th Workshop on Patent Text Mining and Semantic Technologies co-located with SIGIR 2023
Publisher
Paris : CNRS
Link to publishers version
Abstract

Due to the increasing number of patents being published every day, patent citation recommendations have become one of the challenging tasks. Since patent citations may lead to legal and economic consequences, patent recommendations are even more challenging as compared to scientific article citations. One of the crucial components of the patent citation algorithm is negative sampling which is also a part of many other tasks such as text classification, knowledge graph completion, etc. This paper, particularly focuses on proposing a transformer-based ranking model for patent recommendations. It further experimentally compares the performance of patent recommendations based on various state-of-the-art negative sampling approaches to measure and compare the effectiveness of these approaches to aid future developments. These experiments are performed on a newly collected dataset of US patents from Google patents.

Description
Keywords
Patent Citation, Citation Recommendation, Recommender Systems, Patent Citation Recommendation, Negative Sampling
Citation
Dessi, R., Aras, H., & Alam, M. (2023). Exploring the Impact of Negative Sampling on Patent Citation Recommendation. Paris : CNRS.
License
CC BY 4.0 Unported