Yes, Elasticsearch has something like that - refer to Elasticsearch: Query-Time Boosting.
In your case, you would have a portion of your query that notes the presence of the flag you described and this "subquery" would have a boost.
bool with its
should clause will probably be useful.
NB: This is not EXACTLY like being able to say matching document is
n times as likely to be a result
Elasticsearch will tell you how it comes up with the score via the
Explain API which might be helpful in tweaking parameters.
I apologize for what I had posted above. Upon further thought and exploration, I think the
boost parameter is not quite what is required here.
function_score already has the notion of weight but even that falls short. I have found other users with requirements similar to yours but it looks like there haven't been any good solutions proposed for this.
I do not think the solutions proposed in those posts are quite right. I put together a quick shell script hitting the Elasticsearch REST API and relying on
jq (a popular CLI for processing JSON) to demonstrate: Github Gist: Flawed Attempt At Weighed Random Sampling with Elasticsearch
In the script,
featured_flag is equivalent to your
undesired_flag is there to demonstrate how to only consider a subset of documents in the index. You can copy the script tweak global variables at the top of the script like Elasticsearch server, index, etc to try it out.
Some notes on the script:
- script creates one document with
featured_flag enabled and one document with
undesired_flag enabled that should not be ever chosen
TOTAL_DOCUMENTS can be used to adjust how many total documents are created (including the first two created)
FEATURED_FLAG_WEIGHT is the weight applied at query time via
- script reruns the same query 1000 times and outputs stats on how many times each of the created documents was returned as the first result
I would imagine your index has many "featured" or "boosted" samples among many that are not. With the described requirements, the probability of choosing a sample depends on weight of the document (let's say 3 for boosted documents, 1 for the rest) and the sum of weights across all valid documents that you want taken into consideration. Therefore, it seems like simple weights, boosts, and randoms are just insufficient
A lot of people have considered and posted solutions for the task of weighted random sampling without Elasticsearch. This appears to be a good stab at explaining a few approaches: electric monk: Weighted Random Distribution. A lot of algorithmic details may not be quite relevant here but I thought they were interesting.
I think the ideal solution would require work to be done outside of Elasticsearch (without delving into creating Elasticsearch plugins, scorers, etc). Here is the best that I can come up with at the moment:
Slightly related to all this, I posted a slightly different write up.