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203 lines
8.6 KiB
Plaintext
203 lines
8.6 KiB
Plaintext
//- 💫 DOCS > USAGE > VECTORS & SIMILARITY > CUSTOM VECTORS
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| Word vectors let you import knowledge from raw text into your model. The
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| knowledge is represented as a table of numbers, with one row per term in
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| your vocabulary. If two terms are used in similar contexts, the algorithm
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| that learns the vectors should assign them
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| #[strong rows that are quite similar], while words that are used in
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| different contexts will have quite different values. This lets you use
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| the row-values assigned to the words as a kind of dictionary, to tell you
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| some things about what the words in your text mean.
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| Word vectors are particularly useful for terms which
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| #[strong aren't well represented in your labelled training data].
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| For instance, if you're doing named entity recognition, there will always
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| be lots of names that you don't have examples of. For instance, imagine
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| your training data happens to contain some examples of the term
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| "Microsoft", but it doesn't contain any examples of the term "Symantec".
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| In your raw text sample, there are plenty of examples of both terms, and
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| they're used in similar contexts. The word vectors make that fact
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| available to the entity recognition model. It still won't see examples of
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| "Symantec" labelled as a company. However, it'll see that "Symantec" has
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| a word vector that usually corresponds to company terms, so it can
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| #[strong make the inference].
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| In order to make best use of the word vectors, you want the word vectors
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| table to cover a #[strong very large vocabulary]. However, most words are
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| rare, so most of the rows in a large word vectors table will be accessed
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| very rarely, or never at all. You can usually cover more than
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| #[strong 95% of the tokens] in your corpus with just
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| #[strong a few thousand rows] in the vector table. However, it's those
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| #[strong 5% of rare terms] where the word vectors are
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| #[strong most useful]. The problem is that increasing the size of the
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| vector table produces rapidly diminishing returns in coverage over these
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| rare terms.
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+h(3, "custom-vectors-coverage") Optimising vector coverage
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+tag-new(2)
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p
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| To help you strike a good balance between coverage and memory usage,
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| spaCy's #[+api("vectors") #[code Vectors]] class lets you map
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| #[strong multiple keys] to the #[strong same row] of the table. If
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| you're using the #[+api("cli#vocab") #[code spacy vocab]] command to
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| create a vocabulary, pruning the vectors will be taken care of
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| automatically. You can also do it manually in the following steps:
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+list("numbers")
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+item
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| Start with a #[strong word vectors model] that covers a huge
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| vocabulary. For instance, the
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| #[+a("/models/en#en_vectors_web_lg") #[code en_vectors_web_lg]] model
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| provides 300-dimensional GloVe vectors for over 1 million terms of
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| English.
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+item
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| If your vocabulary has values set for the #[code Lexeme.prob]
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| attribute, the lexemes will be sorted by descending probability to
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| determine which vectors to prune. Otherwise, lexemes will be sorted
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| by their order in the #[code Vocab].
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+item
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| Call #[+api("vocab#prune_vectors") #[code Vocab.prune_vectors]] with
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| the number of vectors you want to keep.
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+code.
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nlp = spacy.load('en_vectors_web_lg')
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n_vectors = 105000 # number of vectors to keep
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removed_words = nlp.vocab.prune_vectors(n_vectors)
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assert len(nlp.vocab.vectors) <= n_vectors # unique vectors have been pruned
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assert nlp.vocab.vectors.n_keys > n_vectors # but not the total entries
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| #[+api("vocab#prune_vectors") #[code Vocab.prune_vectors]] reduces the
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| current vector table to a given number of unique entries, and returns a
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| dictionary containing the removed words, mapped to #[code (string, score)]
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| tuples, where #[code string] is the entry the removed word was mapped
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| to, and #[code score] the similarity score between the two words.
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+code("Removed words").
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{
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'Shore': ('coast', 0.732257),
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'Precautionary': ('caution', 0.490973),
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'hopelessness': ('sadness', 0.742366),
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'Continous': ('continuous', 0.732549),
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'Disemboweled': ('corpse', 0.499432),
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'biostatistician': ('scientist', 0.339724),
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'somewheres': ('somewheres', 0.402736),
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'observing': ('observe', 0.823096),
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'Leaving': ('leaving', 1.0)
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}
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| In the example above, the vector for "Shore" was removed and remapped
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| to the vector of "coast", which is deemed about 73% similar. "Leaving"
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| was remapped to the vector of "leaving", which is identical.
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+h(3, "custom-vectors-add") Adding vectors
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+tag-new(2)
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| spaCy's new #[+api("vectors") #[code Vectors]] class greatly improves the
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| way word vectors are stored, accessed and used. The data is stored in
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| two structures:
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+list
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+item
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| An array, which can be either on CPU or #[+a("#gpu") GPU].
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+item
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| A dictionary mapping string-hashes to rows in the table.
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| Keep in mind that the #[code Vectors] class itself has no
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| #[+api("stringstore") #[code StringStore]], so you have to store the
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| hash-to-string mapping separately. If you need to manage the strings,
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| you should use the #[code Vectors] via the
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| #[+api("vocab") #[code Vocab]] class, e.g. #[code vocab.vectors]. To
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| add vectors to the vocabulary, you can use the
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| #[+api("vocab#set_vector") #[code Vocab.set_vector]] method.
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+code("Adding vectors").
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from spacy.vocab import Vocab
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vector_data = {u'dog': numpy.random.uniform(-1, 1, (300,)),
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u'cat': numpy.random.uniform(-1, 1, (300,)),
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u'orange': numpy.random.uniform(-1, 1, (300,))}
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vocab = Vocab()
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for word, vector in vector_data.items():
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vocab.set_vector(word, vector)
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+h(3, "custom-loading-glove") Loading GloVe vectors
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+tag-new(2)
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| spaCy comes with built-in support for loading
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| #[+a("https://nlp.stanford.edu/projects/glove/") GloVe] vectors from
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| a directory. The #[+api("vectors#from_glove") #[code Vectors.from_glove]]
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| method assumes a binary format, the vocab provided in a
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| #[code vocab.txt], and the naming scheme of
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| #[code vectors.{size}.[fd].bin]. For example:
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+aside-code("Directory structure", "yaml").
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└── vectors
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├── vectors.128.f.bin # vectors file
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└── vocab.txt # vocabulary
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+table(["File name", "Dimensions", "Data type"])
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+row
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+cell #[code vectors.128.f.bin]
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+cell 128
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+cell float32
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+row
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+cell #[code vectors.300.d.bin]
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+cell 300
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+cell float64 (double)
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+code.
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nlp = spacy.load('en')
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nlp.vocab.vectors.from_glove('/path/to/vectors')
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| If your instance of #[code Language] already contains vectors, they will
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| be overwritten. To create your own GloVe vectors model package like
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| spaCy's #[+a("/models/en#en_vectors_web_lg") #[code en_vectors_web_lg]],
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| you can call #[+api("language#to_disk") #[code nlp.to_disk]], and then
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| package the model using the #[+api("cli#package") #[code package]]
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| command.
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+h(3, "custom-loading-other") Loading other vectors
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+tag-new(2)
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| You can also choose to load in vectors from other sources, like the
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| #[+a("https://github.com/facebookresearch/fastText/blob/master/pretrained-vectors.md") fastText vectors]
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| for 294 languages, trained on Wikipedia. After reading in the file,
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| the vectors are added to the #[code Vocab] using the
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| #[+api("vocab#set_vector") #[code set_vector]] method.
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+github("spacy", "examples/vectors_fast_text.py")
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+h(3, "custom-similarity") Using custom similarity methods
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| By default, #[+api("token#vector") #[code Token.vector]] returns the
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| vector for its underlying #[+api("lexeme") #[code Lexeme]], while
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| #[+api("doc#vector") #[code Doc.vector]] and
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| #[+api("span#vector") #[code Span.vector]] return an average of the
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| vectors of their tokens. You can customise these
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| behaviours by modifying the #[code doc.user_hooks],
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| #[code doc.user_span_hooks] and #[code doc.user_token_hooks]
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| dictionaries.
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+infobox
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| For more details on #[strong adding hooks] and #[strong overwriting] the
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| built-in #[code Doc], #[code Span] and #[code Token] methods, see the
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| usage guide on #[+a("/usage/processing-pipelines#user-hooks") user hooks].
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