I need to build a search engine using Elasticsearch and the steps will be as following:

  1. Search on the search engine with a search string.
  2. The relevant results will display and I can click on these documents.
  3. If I select a document, I will be redirected to another page where I will see all the details of the documents and will have an option "More Like This" (which will return documents similar to the selected document). I know that this is done using the MLT query.
  4. Now my question is: Except for returning documents similar to the selected one, how can I also return at what percentage the documents are similar to the selected one?

2 Answers 2


There are a couple of things you can do.

using function_score query

more_like_this query is essentially a full text search, and it returns documents ordered by their relevance score. It could be possible to convert the score directly to a percentage, but it is not advised (here and more specifically here).

Instead one can define a custom score with help of a function_score query, which can be designed so it returns a meaningful percentage.

This, of course, comes with additional cost of complexity, and the definition of "similarity" becomes more of an art than of science.

using dense_vector

One may opt to use the (yet experimental) dense_vector data type, which allows storing and comparing dense vectors (that is, arrays of numbers of fixed size). Here's an article that describes this approach very well: Text similarity search with vector fields.

In this case the definition of similarity is as precise as it can possibly be: a distance of two vectors in a multidimensional space, which can be computed via, for instance, cosine similarity.

However, such dense vectors have to be somehow computed, and the quality of said vectors will equal the quality of the similarity itself.

As the bottom line I must say that to make this work with Elasticsearch a bunch of computation and logic should be added outside, either in form of pre-computed models, or custom curated scoring algorithms. Elasticsearch out of the box does not seem to be a good percentage-similarity kind of deal.

Hope that helps!


If you're going the route of using semantic search via dense_vector, as Nikolay mentioned, I would recommend NBoost. NBoost has a good out-of-the-box systems for improving Elasticsearch results with SOTA models.

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