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Using gensim I was able to extract topics from a set of documents in LSA but how do I access the topics generated from the LDA models?

When printing the lda.print_topics(10) the code gave the following error because print_topics() return a NoneType:

Traceback (most recent call last):
  File "/home/alvas/workspace/XLINGTOP/xlingtop.py", line 93, in <module>
    for top in lda.print_topics(2):
TypeError: 'NoneType' object is not iterable

The code:

from gensim import corpora, models, similarities
from gensim.models import hdpmodel, ldamodel
from itertools import izip

documents = ["Human machine interface for lab abc computer applications",
              "A survey of user opinion of computer system response time",
              "The EPS user interface management system",
              "System and human system engineering testing of EPS",
              "Relation of user perceived response time to error measurement",
              "The generation of random binary unordered trees",
              "The intersection graph of paths in trees",
              "Graph minors IV Widths of trees and well quasi ordering",
              "Graph minors A survey"]

# remove common words and tokenize
stoplist = set('for a of the and to in'.split())
texts = [[word for word in document.lower().split() if word not in stoplist]
         for document in documents]

# remove words that appear only once
all_tokens = sum(texts, [])
tokens_once = set(word for word in set(all_tokens) if all_tokens.count(word) == 1)
texts = [[word for word in text if word not in tokens_once]
         for text in texts]

dictionary = corpora.Dictionary(texts)
corpus = [dictionary.doc2bow(text) for text in texts]

# I can print out the topics for LSA
lsi = models.LsiModel(corpus_tfidf, id2word=dictionary, num_topics=2)
corpus_lsi = lsi[corpus]

for l,t in izip(corpus_lsi,corpus):
  print l,"#",t
print
for top in lsi.print_topics(2):
  print top

# I can print out the documents and which is the most probable topics for each doc.
lda = ldamodel.LdaModel(corpus, id2word=dictionary, num_topics=50)
corpus_lda = lda[corpus]

for l,t in izip(corpus_lda,corpus):
  print l,"#",t
print

# But I am unable to print out the topics, how should i do it?
for top in lda.print_topics(10):
  print top
share|improve this question
    
Something is missing in your code, namely corpus_tfidf computation. Would you please add the remaining piece? – mel Feb 5 '15 at 16:38

I think syntax of show_topics has changed over time:

show_topics(num_topics=10, num_words=10, log=False, formatted=True)

For num_topics number of topics, return num_words most significant words (10 words per topic, by default).

The topics are returned as a list – a list of strings if formatted is True, or a list of (probability, word) 2-tuples if False.

If log is True, also output this result to log.

Unlike LSA, there is no natural ordering between the topics in LDA. The returned num_topics <= self.num_topics subset of all topics is therefore arbitrary and may change between two LDA training runs.

share|improve this answer

Here is sample code to print topics:

def ExtractTopics(filename, numTopics=5):
    # filename is a pickle file where I have lists of lists containing bag of words
    texts = pickle.load(open(filename, "rb"))

    # generate dictionary
    dict = corpora.Dictionary(texts)

    # remove words with low freq.  3 is an arbitrary number I have picked here
    low_occerance_ids = [tokenid for tokenid, docfreq in dict.dfs.iteritems() if docfreq == 3]
    dict.filter_tokens(low_occerance_ids)
    dict.compactify()
    corpus = [dict.doc2bow(t) for t in texts]
    # Generate LDA Model
    lda = models.ldamodel.LdaModel(corpus, num_topics=numTopics)
    i = 0
    # We print the topics
    for topic in lda.show_topics(num_topics=numTopics, formatted=False, topn=20):
        i = i + 1
        print "Topic #" + str(i) + ":",
        for p, id in topic:
            print dict[int(id)],

        print ""
share|improve this answer
    
I tried to run your code where I pass list of list containing BOW to text. I get following error: TypeError: show_topics() got an unexpected keyword argument 'topics' – mribot Feb 9 '15 at 21:31
1  
try num_topics. I corrected the code above. – Shirish Kumar Feb 10 '15 at 18:22

Are you using any logging? print_topics prints to the logfile as stated in the docs.

As @mac389 says, lda.show_topics() is the way to go to print to screen.

share|improve this answer
    
i'm not using any logging because i need to use the topics immediately. you're right, the lda.show_topics() or lda.print_topic(i) is the way to go. – alvas Mar 6 '13 at 23:40

After some messing around, it seems like print_topics(numoftopics) for the ldamodel has some bug. So my workaround is to use print_topic(topicid):

>>> print lda.print_topics()
None
>>> for i in range(0, lda.num_topics-1):
>>>  print lda.print_topic(i)
0.083*response + 0.083*interface + 0.083*time + 0.083*human + 0.083*user + 0.083*survey + 0.083*computer + 0.083*eps + 0.083*trees + 0.083*system
...
share|improve this answer
4  
print_topics is an alias for show_topics with the first five topics. Just write lda.show_topics(), no print necessary. – mac389 Feb 24 '13 at 21:35

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