Active Learning and Crowdsourcing: A Survey of Optimization Methods for Data Labeling
- Авторлар: Gilyazev R.A.1,2, Turdakov D.Y.1,3,4
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Мекемелер:
- Ivannikov Institute for System Programming, Russian Academy of Sciences
- Moscow Institute of Physics and Technology
- Moscow State University
- National Research University Higher School of Economics
- Шығарылым: Том 44, № 6 (2018)
- Беттер: 476-491
- Бөлім: Article
- URL: https://journals.rcsi.science/0361-7688/article/view/176707
- DOI: https://doi.org/10.1134/S0361768818060142
- ID: 176707
Дәйексөз келтіру
Аннотация
High-quality annotated collections are a key element in constructing systems that use machine learning. In most cases, these collections are created through manual labeling, which is expensive and tedious for annotators. To optimize data labeling, a number of methods using active learning and crowdsourcing were proposed. This paper provides a survey of currently available approaches, discusses their combined use, and describes existing software systems designed to facilitate the data labeling process.
Авторлар туралы
R. Gilyazev
Ivannikov Institute for System Programming, Russian Academy of Sciences; Moscow Institute of Physics and Technology
Хат алмасуға жауапты Автор.
Email: gilyazev@ispras.ru
Ресей, ul. Solzhenitsyna 25, Moscow, 109004; Institutskii per. 9, Dolgoprudnyi, Moscow oblast, 141701
D. Turdakov
Ivannikov Institute for System Programming, Russian Academy of Sciences; Moscow State University; National Research University Higher School of Economics
Хат алмасуға жауапты Автор.
Email: turdakov@ispras.ru
Ресей, ul. Solzhenitsyna 25, Moscow, 109004; Moscow, 119991; ul. Myasnitskaya 20, Moscow, 101000
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