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Autori principali: Yang, Zhen, Ding, Ming, Huang, Tinglin, Cen, Yukuo, Song, Junshuai, Xu, Bin, Dong, Yuxiao, Tang, Jie
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2402.17238
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author Yang, Zhen
Ding, Ming
Huang, Tinglin
Cen, Yukuo
Song, Junshuai
Xu, Bin
Dong, Yuxiao
Tang, Jie
author_facet Yang, Zhen
Ding, Ming
Huang, Tinglin
Cen, Yukuo
Song, Junshuai
Xu, Bin
Dong, Yuxiao
Tang, Jie
contents Negative sampling has swiftly risen to prominence as a focal point of research, with wide-ranging applications spanning machine learning, computer vision, natural language processing, data mining, and recommender systems. This growing interest raises several critical questions: Does negative sampling really matter? Is there a general framework that can incorporate all existing negative sampling methods? In what fields is it applied? Addressing these questions, we propose a general framework that leverages negative sampling. Delving into the history of negative sampling, we trace the development of negative sampling through five evolutionary paths. We dissect and categorize the strategies used to select negative sample candidates, detailing global, local, mini-batch, hop, and memory-based approaches. Our review categorizes current negative sampling methods into five types: static, hard, GAN-based, Auxiliary-based, and In-batch methods, providing a clear structure for understanding negative sampling. Beyond detailed categorization, we highlight the application of negative sampling in various areas, offering insights into its practical benefits. Finally, we briefly discuss open problems and future directions for negative sampling.
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id arxiv_https___arxiv_org_abs_2402_17238
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publishDate 2024
record_format arxiv
spellingShingle Does Negative Sampling Matter? A Review with Insights into its Theory and Applications
Yang, Zhen
Ding, Ming
Huang, Tinglin
Cen, Yukuo
Song, Junshuai
Xu, Bin
Dong, Yuxiao
Tang, Jie
Machine Learning
Negative sampling has swiftly risen to prominence as a focal point of research, with wide-ranging applications spanning machine learning, computer vision, natural language processing, data mining, and recommender systems. This growing interest raises several critical questions: Does negative sampling really matter? Is there a general framework that can incorporate all existing negative sampling methods? In what fields is it applied? Addressing these questions, we propose a general framework that leverages negative sampling. Delving into the history of negative sampling, we trace the development of negative sampling through five evolutionary paths. We dissect and categorize the strategies used to select negative sample candidates, detailing global, local, mini-batch, hop, and memory-based approaches. Our review categorizes current negative sampling methods into five types: static, hard, GAN-based, Auxiliary-based, and In-batch methods, providing a clear structure for understanding negative sampling. Beyond detailed categorization, we highlight the application of negative sampling in various areas, offering insights into its practical benefits. Finally, we briefly discuss open problems and future directions for negative sampling.
title Does Negative Sampling Matter? A Review with Insights into its Theory and Applications
topic Machine Learning
url https://arxiv.org/abs/2402.17238