Home Machine Learning Understanding Latent Dirichlet Allocation (LDA) — A Knowledge Scientist’s Information (Half 1) | by Louis Chan | Feb, 2024

Understanding Latent Dirichlet Allocation (LDA) — A Knowledge Scientist’s Information (Half 1) | by Louis Chan | Feb, 2024

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Understanding Latent Dirichlet Allocation (LDA) — A Knowledge Scientist’s Information (Half 1) | by Louis Chan | Feb, 2024

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LDA Defined with a Canine Pedigree Mannequin

Machine studying algorithms are actually so accessible that even my non-technical spouse always asks: “Isn’t that what ChatGPT is able to?”

The time has come for knowledge scientists to stay vigilant on the whys and hows behind machine studying algorithms.

This 2-part weblog put up is an precise journey the place I’ve tried to clarify to my spouse how Latent Dirichlet Allocation (LDA, a staple in all knowledge scientists’ arsenal for matter modelling, advice and extra) works with the assistance of a canine pedigree mannequin. By the top of the collection, you must be capable to reply the next:

Half 1:

  • How does LDA work?
  • How one can clarify LDA to a non-technical individual?

Half 2:

  • How does LDA converge?
  • When to make use of LDA & when to not?
  • What are the alternate options & variants to LDAs (excluding LLMs)?

Let’s get began.

Think about you will have the most effective job on the earth:

Estimate the combination of pedigree of a bunch of lovely canine images

Straightforward sufficient!

Brief legs = Corgi or Dachshund;

Lengthy physique = Dachshund;

Chocolate chip muffin face = Chihuahua.

Supply: Wikipedia

However every canine has a novel mix of traits. A canine may need a Corgi’s quick legs however the face of a Chihuahua. We aren’t simply figuring out breeds however modelling a mosaic of traits into teams of breeds.

Variety of Matters & Corpus

Regardless that we aren’t classifying canine images for his or her breed, it’s useful to think about the bodily traits we are able to observe from all pictures and roughly how…

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