未验证 提交 67a4537b 编写于 作者: S Slav Petrov 提交者: GitHub

Update multilingual.md

Correct Wikipedia size correlation comment.
上级 0fce551b
...@@ -69,7 +69,7 @@ Note that the English result is worse than the 84.2 MultiNLI baseline because ...@@ -69,7 +69,7 @@ Note that the English result is worse than the 84.2 MultiNLI baseline because
this training used Multilingual BERT rather than English-only BERT. This implies this training used Multilingual BERT rather than English-only BERT. This implies
that for high-resource languages, the Multilingual model is somewhat worse than that for high-resource languages, the Multilingual model is somewhat worse than
a single-language model. However, it is not feasible for us to train and a single-language model. However, it is not feasible for us to train and
maintain dozens of single-language model. Therefore, if your goal is to maximize maintain dozens of single-language models. Therefore, if your goal is to maximize
performance with a language other than English or Chinese, you might find it performance with a language other than English or Chinese, you might find it
beneficial to run pre-training for additional steps starting from our beneficial to run pre-training for additional steps starting from our
Multilingual model on data from your language of interest. Multilingual model on data from your language of interest.
...@@ -152,11 +152,9 @@ taken as the training data for each language ...@@ -152,11 +152,9 @@ taken as the training data for each language
However, the size of the Wikipedia for a given language varies greatly, and However, the size of the Wikipedia for a given language varies greatly, and
therefore low-resource languages may be "under-represented" in terms of the therefore low-resource languages may be "under-represented" in terms of the
neural network model (under the assumption that languages are "competing" for neural network model (under the assumption that languages are "competing" for
limited model capacity to some extent). limited model capacity to some extent). At the same time, we also don't want
to overfit the model by performing thousands of epochs over a tiny Wikipedia
However, the size of a Wikipedia also correlates with the number of speakers of for a particular language.
a language, and we also don't want to overfit the model by performing thousands
of epochs over a tiny Wikipedia for a particular language.
To balance these two factors, we performed exponentially smoothed weighting of To balance these two factors, we performed exponentially smoothed weighting of
the data during pre-training data creation (and WordPiece vocab creation). In the data during pre-training data creation (and WordPiece vocab creation). In
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