FullRecall: A Semantic Search-Based Ranking Approach for Maximizing Recall in Patent Retrieval
Amna Ali, Liyanage C. De Silva, Pg Emeroylariffion Abas

TL;DR
FullRecall is a novel patent retrieval method that guarantees 100% recall by combining IPC-guided phrase extraction with a multi-phase ranking, outperforming baseline methods in experimental tests.
Contribution
The paper introduces FullRecall, a new multi-phase patent retrieval approach that ensures complete recall and improves precision, leveraging IPC-guided knowledge for effective query formulation.
Findings
Achieves 100% recall in all test cases.
Outperforms baseline methods HRR2 and ReQ-ReC.
Balances recall and precision effectively.
Abstract
Patent examiners and inventors face significant pressure to verify the originality and non-obviousness of inventions, and the intricate nature of patent data intensifies the challenges of patent retrieval. Therefore, there is a pressing need to devise cutting-edge retrieval strategies that can reliably achieve the desired recall. This study introduces FullRecall, a novel patent retrieval approach that effectively manages the complexity of patent data while maintaining the reliability of relevance matching and maximising recall. It leverages IPC-guided knowledge to generate informative phrases, which are processed to extract key information in the form of noun phrases characterising the query patent under observation. From these, the top k keyphrases are selected to construct a query for retrieving a focused subset of the dataset. This initial retrieval step achieves complete recall,…
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