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Dropout-LSTM+Noise(Bernoulli) (WT2)

Columbia UniversityNew York University (NYU)Princeton UniversityLanguage modeling

Dropout-LSTM+Noise(Bernoulli) (WT2) is a language modeling model from Columbia University,New York University (NYU),Princeton University released in 2018 with 51000000.0 parameters.

About Dropout-LSTM+Noise(Bernoulli) (WT2)

Recurrent neural networks (RNNs) are powerful models of sequential data. They have been successfully used in domains such as text and speech. However, RNNs are susceptible to overfitting; regularization is important. In this paper we develop Noisin,

Details

Provider
Columbia University,New York University (NYU),Princeton University
Task
Language modeling
Parameters
51000000.0
Released
2018-05-03
Open weights
No
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