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.

1 Answer 1


Take a look at sklearn.decomposition.LatentDirichletAllocation.components_:

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', 
        'cookies candy', 'more text please', 'hey there are more words here',
        '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.

  • 1
    Hi. Thank you so much for this. Do you know how I can get the frequency of each Word within the topic?
    – dagrun
    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
    – blacksite
    Jan 28, 2019 at 13:53

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