# Getting topic-word distribution from LDA in scikit learn

I was wondering if there is a method in the LDA implementation of scikit learn that returns the topic-word distribution. Like the genism show_topics() method. I checked the documentation but didn't find anything.

components_ : array, [n_topics, n_features]

Topic word distribution. components_[i, j] represents word j in topic i.

Here's a minimal example:

``````import numpy as np
from sklearn.decomposition import LatentDirichletAllocation
from sklearn.feature_extraction.text import CountVectorizer

data = ['blah blah foo bar', 'foo foo foo foo bar', 'bar bar bar bar foo',
'foo bar bar bar baz foo', 'foo foo foo bar baz', 'blah banana',
'bananas', 'i am a real boy', 'boy', 'girl']

vectorizer = CountVectorizer()
X = vectorizer.fit_transform(data)

vocab = vectorizer.get_feature_names()

n_top_words = 5
k = 2

model = LatentDirichletAllocation(n_topics=k, random_state=100)

id_topic = model.fit_transform(X)

topic_words = {}

for topic, comp in enumerate(model.components_):
# for the n-dimensional array "arr":
# argsort() returns a ranked n-dimensional array of arr, call it "ranked_array"
# which contains the indices that would sort arr in a descending fashion
# for the ith element in ranked_array, ranked_array[i] represents the index of the
# element in arr that should be at the ith index in ranked_array
# ex. arr = [3,7,1,0,3,6]
# np.argsort(arr) -> [3, 2, 0, 4, 5, 1]
# word_idx contains the indices in "topic" of the top num_top_words most relevant
# to a given topic ... it is sorted ascending to begin with and then reversed (desc. now)
word_idx = np.argsort(comp)[::-1][:n_top_words]

# store the words most relevant to the topic
topic_words[topic] = [vocab[i] for i in word_idx]
``````

Check out the results:

``````for topic, words in topic_words.items():
print('Topic: %d' % topic)
print('  %s' % ', '.join(words))

Topic: 0
more, blah, here, hey, words
Topic: 1
foo, bar, blah, baz, boy
``````

You should obviously try this code with a much larger body of text, but this is one way to get the most informative words for a given number of topics.

• Hi. Thank you so much for this. Do you know how I can get the frequency of each Word within the topic? Jan 28, 2019 at 13:35
• I'm not sure that information is stored directly in the `LatentDirichletAllocation` object itself, but I could think of two (relatively easy) ways of doing this: 1) if you're using a `CountVectorizer`, just sum the counts, column-by-column (i.e. token-by-token) and lookup from there; 2) use something like `collections.Counter` to count individual tokens across the entire corpus flattened Jan 28, 2019 at 13:53