Papers with deep-learning approaches

2 papers
BPID: A Benchmark for Personal Identity Deduplication (2024.emnlp-industry)

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Challenge: Data deduplication is a critical task in data management and mining, focused on consolidating duplicate records that refer to the same entity.
Approach: They propose to use a dataset with 1,000,000 unlabeled synthetic PII profiles and a subset of 10,000 pairs curated and labeled as matches or non-matches.
Outcome: The proposed datasets contain synthetic profiles built from publicly available sources that do not represent real individuals.
Sense-Annotated Corpora for Word Sense Disambiguation in Multiple Languages and Domains (2020.lrec-1)

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Challenge: Word Sense Disambiguation (WSD) is a field of NLP where data is usually tied to a specific language.
Approach: They propose to release five large datasets annotated with word-senses in five different languages and 5 datasets in English for a different semantic domain.
Outcome: The study shows that supervised models trained on the data achieve higher performance than those trained on other corpora.

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