radiobee-aligner / radiobee /gen_model.py
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"""Generate a model (textacy.representations.Vectorizer).
vectorizer = Vectorizer(
tf_type="linear", idf_type="smooth", norm="l2",
min_df=3, max_df=0.95)
doc_term_matrix = vectorizer.fit_transform(tokenized_docs)
doc_term_matrix
tokenized_docs = [insert_spaces(elm).split() for elm in textzh]
"""
from typing import Dict, Iterable, List, Optional, Union # noqa
from textacy.representations import Vectorizer
from logzero import logger
# fmt: off
def gen_model(
tokenized_docs: Iterable[Iterable[str]], # List[List[str]],
tf_type: str = 'linear',
idf_type: Optional[str] = "smooth",
dl_type: str = None, # Optional[str] = "sqrt" “lucene-style tfidf”
norm: Optional[str] = "l2", # + "l2"
min_df: Union[int, float] = 1,
max_df: Union[int, float] = 1.0,
max_n_terms: Optional[int] = None,
vocabulary_terms: Optional[Union[Dict[str, int], Iterable[str]]] = None
) -> Vectorizer:
# fmt: on
"""Generate a model (textacy.representations.Vectorizer).
Args:
doc: tokenized docs
(refer to textacy.representation.Vectorizer)
tf_type: Type of term frequency (tf) to use for weights' local component:
- "linear": tf (tfs are already linear, so left as-is)
- "sqrt": tf => sqrt(tf)
- "log": tf => log(tf) + 1
- "binary": tf => 1
idf_type: Type of inverse document frequency (idf) to use for weights'
global component:
- "standard": idf = log(n_docs / df) + 1.0
- "smooth": idf = log(n_docs + 1 / df + 1) + 1.0, i.e. 1 is added
to all document frequencies, as if a single document containing
every unique term was added to the corpus.
- "bm25": idf = log((n_docs - df + 0.5) / (df + 0.5)), which is
a form commonly used in information retrieval that allows for
very common terms to receive negative weights.
- None: no global weighting is applied to local term weights.
dl_type: Type of document-length scaling to use for weights'
normalization component:
- "linear": dl (dls are already linear, so left as-is)
- "sqrt": dl => sqrt(dl)
- "log": dl => log(dl)
- None: no normalization is applied to local(*global?) weights
norm: If "l1" or "l2", normalize weights by the L1 or L2 norms, respectively,
of row-wise vectors; otherwise, don't.
min_df: Minimum number of documents in which a term must appear for it to be
included in the vocabulary and as a column in a transformed doc-term matrix.
If float, value is the fractional proportion of the total number of docs,
which must be in [0.0, 1.0]; if int, value is the absolute number.
max_df: Maximum number of documents in which a term may appear for it to be
included in the vocabulary and as a column in a transformed doc-term matrix.
If float, value is the fractional proportion of the total number of docs,
which must be in [0.0, 1.0]; if int, value is the absolute number.
max_n_terms: If specified, only include terms whose document frequency is within
the top ``max_n_terms``.
vocabulary_terms: Mapping of unique term string to unique term id, or
an iterable of term strings that gets converted into such a mapping.
Note that, if specified, vectorized outputs will include *only* these terms.
“lucene-style tfidf”: Adds a doc-length normalization to the usual local and global components.
Params: tf_type="linear", apply_idf=True, idf_type="smooth", apply_dl=True, dl_type="sqrt"
“lucene-style bm25”: Uses a smoothed idf instead of the classic bm25 variant to prevent weights on terms from going negative.
Params: tf_type="bm25", apply_idf=True, idf_type="smooth", apply_dl=True, dl_type="linear"
Attributes:
doc_term_matrix
Returns:
transform_fit'ted vectorizer
"""
# make sure tokenized_docs is the right typing
try:
for xelm in iter(tokenized_docs):
for elm in iter(xelm):
assert isinstance(elm, str)
except AssertionError:
raise AssertionError(" tokenized_docs is not of the typing Iterable[Iterable[str]] ")
except Exception as e:
logger.error(e)
raise
vectorizer = Vectorizer(
# tf_type="linear", idf_type="smooth", norm="l2", min_df=3, max_df=0.95)
tf_type=tf_type,
idf_type=idf_type,
dl_type=dl_type,
norm=norm,
min_df=min_df,
max_df=max_df,
max_n_terms=max_n_terms,
vocabulary_terms=vocabulary_terms
)
doc_term_matrix = vectorizer.fit_transform(tokenized_docs)
gen_model.doc_term_matrix = doc_term_matrix
return vectorizer