Currently I'm using the following code to lemmatize and calculate TF-IDF values for some text data using spaCy:
lemma = []
for doc in nlp.pipe(df['col'].astype('unicode').values, batch_size=9844,
n_threads=3):
if doc.is_parsed:
lemma.append([n.lemma_ for n in doc if not n.lemma_.is_punct | n.lemma_ != "-PRON-"])
else:
lemma.append(None)
df['lemma_col'] = lemma
vect = sklearn.feature_extraction.text.TfidfVectorizer()
lemmas = df['lemma_col'].apply(lambda x: ' '.join(x))
vect = sklearn.feature_extraction.text.TfidfVectorizer()
features = vect.fit_transform(lemmas)
feature_names = vect.get_feature_names()
dense = features.todense()
denselist = dense.tolist()
df = pd.DataFrame(denselist, columns=feature_names)
df = pd.DataFrame(denselist, columns=feature_names)
lemmas = pd.concat([lemmas, df])
df= pd.concat([df, lemmas])
I need to strip out proper nouns, punctuation, and stop words but am having some trouble doing that within my current code. I've read some documentation and other resources, but am now running into an error:
---------------------------------------------------------------------------
AttributeError Traceback (most recent call last)
<ipython-input-21-e924639f7822> in <module>()
7 if doc.is_parsed:
8 tokens.append([n.text for n in doc])
----> 9 lemma.append([n.lemma_ for n in doc if not n.lemma_.is_punct or n.lemma_ != "-PRON-"])
10 pos.append([n.pos_ for n in doc])
11 else:
<ipython-input-21-e924639f7822> in <listcomp>(.0)
7 if doc.is_parsed:
8 tokens.append([n.text for n in doc])
----> 9 lemma.append([n.lemma_ for n in doc if not n.lemma_.is_punct or n.lemma_ != "-PRON-"])
10 pos.append([n.pos_ for n in doc])
11 else:
AttributeError: 'str' object has no attribute 'is_punct'
Is there an easier way to strip this stuff out of the text, without having to drastically change my approach?
Full code available here.
From what I can see, your main problem here is actually quite simple: n.lemma_
returns a string, not a Token
object. So it doesn't have an is_punct
attribute. I think what you were looking for here is n.is_punct
(whether the token is punctuation).
If you want to do this more elegantly, check out spaCy's new custom processing pipeline components (requires v2.0+). This lets you wrap your logic in a function which is run automatically when you call nlp()
on your text. You could even take this one step further, and add a custom attribute to your Doc
– for example, doc._.my_stripped_doc
or doc._.pd_columns
or something. The advantage here is that you can keep using spaCy's performant, built-in data structures like the Doc
(and its views Token
and Span
) as the "single source of truth" of your application. This way, no information is lost and you'll always keep a reference to the original document – which is also very useful for debugging.
as you are using spacy use this function to remove punctuation .
df["newcolname"] = df.column name(onwhich yoy want to remove stopword).apply(lambda text:
" ".join(token.lemma_ for token in nlp(text)
if not token.is_punct)
df["puncfree"] = df.review.apply(lambda text:
" ".join(token.lemma_ for token in nlp(text)
if not token.is_punct))
for convince and better understanding i am posting my code that i used to remove punctuation
"review" is column name i want to remove punctuation from.
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