Challenge: Creating Word Embeddings
Завдання
Swipe to start coding
Now, it's time for you to train a Word2Vec model to generate word embeddings for the given corpus:
- Import the class for creating a Word2Vec model.
- Tokenize each sentence in the
'Document'
column of thecorpus
by splitting each sentence into words separated by whitespaces. Store the result in thesentences
variable. - Initialize the Word2Vec model by passing
sentences
as the first argument and setting the following values as keyword arguments, in this order:- embedding size: 50;
- context window size: 2;
- minimal frequency of words to include in the model: 1;
- model: skip-gram.
- Print the top-3 most similar words to the word 'bowl'.
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Секція 4. Розділ 4
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Challenge: Creating Word Embeddings
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Завдання
Swipe to start coding
Now, it's time for you to train a Word2Vec model to generate word embeddings for the given corpus:
- Import the class for creating a Word2Vec model.
- Tokenize each sentence in the
'Document'
column of thecorpus
by splitting each sentence into words separated by whitespaces. Store the result in thesentences
variable. - Initialize the Word2Vec model by passing
sentences
as the first argument and setting the following values as keyword arguments, in this order:- embedding size: 50;
- context window size: 2;
- minimal frequency of words to include in the model: 1;
- model: skip-gram.
- Print the top-3 most similar words to the word 'bowl'.
Рішення
Все було зрозуміло?
Дякуємо за ваш відгук!
Awesome!
Completion rate improved to 4.17Секція 4. Розділ 4
single