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I am trying to learn about Latent Dirichlet Allocation (LDA). I have basic knowledge of machine learning and probability theory and based on this blog post http://goo.gl/ccPvE I was able to develop the intuition behind LDA. However I still haven't got complete understanding of the various calculations that goes in it. I am wondering can someone show me the calculations using a very small corpus (let say of 3-5 sentences and 2-3 topics).

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1 Answer 1

Edwin Chen (who works at Twitter btw) has an example in his blog. 5 sentences, 2 topics:

  • I like to eat broccoli and bananas.
  • I ate a banana and spinach smoothie for breakfast.
  • Chinchillas and kittens are cute.
  • My sister adopted a kitten yesterday.
  • Look at this cute hamster munching on a piece of broccoli.

Then he does some "calculations"

  • Sentences 1 and 2: 100% Topic A
  • Sentences 3 and 4: 100% Topic B
  • Sentence 5: 60% Topic A, 40% Topic B

And take guesses of the topics:

  • Topic A: 30% broccoli, 15% bananas, 10% breakfast, 10% munching, …
    • at which point, you could interpret topic A to be about food
  • Topic B: 20% chinchillas, 20% kittens, 20% cute, 15% hamster, …
    • at which point, you could interpret topic B to be about cute animals

Your question is how did he come up with those numbers? Which words in these sentences carry "information":

  • broccoli, bananas, smoothie, breakfast, munching, eat
  • chinchilla, kitten, cute, adopted, hampster

Now let's go sentence by sentence getting words from each topic:

  • food 3, cute 0 --> food
  • food 5, cute 0 --> food
  • food 0, cute 3 --> cute
  • food 0, cute 2 --> cute
  • food 2, cute 2 --> 50% food + 50% cute

So my numbers, differ slightly from Chen's. Maybe he includes the word "piece" in "piece of broccoli" as counting towards food.

We made two calculations in our heads:

  • to look at the sentences and come up with 2 topics in the first place. LDA does this by considering each sentence as a "mixture" of topics and guessing the parameters of each topic.
  • to decide which words are important. LDA uses "term-frequency/inverse-document-frequency" to understand this.
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The question was asking really about the calculations, about which you just say "Then he does some "calculations" - can you explain further please? :) –  LittleBobbyTables Jul 30 '14 at 19:39
@LittleBobbyTables This was like 2 years ago. I was too lazy to write the TF-IDF calculations nor did I really understand them! –  john mangual Jul 30 '14 at 21:17
I understand TFIDF, its not too hard to implement in python. Edwin Chen glosses over lots of details like extracting words using the poisson distribution which are included in that phase :O –  LittleBobbyTables Jul 30 '14 at 21:28
@LittleBobbyTables Can you do me a favor and post a separate question, even if its very similar to this one? It will help me understand your specific motivation and it would be good to revisit this topic. –  john mangual Jul 30 '14 at 21:35

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