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I am having a little bit of trouble with a custom_filters_score. Individual scores 0.81491333, 0.125 and 0.08695652 are added up to equal 0.1727262

EDIT: I looked over it again and it looks like the total of the custom_filters_score is being multiplied by the 'normal' query.

Is there a way to either incorporate the normal query (custom_score) into the custom_filter_score or, alternatively, a way to force elasticsearch to add the two together (instead of multiplying)?

A gist of the data, query and mapping is at https://gist.github.com/sqwk/3d7b25192a236fba82b4

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What version of ES are you using? I see some commits to fix score explanations in recent versions –  DrTech Mar 29 '13 at 11:09
    
0.20.6 I looked over it again and it looks like the total of the custom_filters_score is being multiplied by the 'normal' query. Is there a way to change that? –  sqwk Mar 29 '13 at 14:48
    
Ah, that's score normalization, and the same value is applied to all results of a query - you can ignore it. And no you can't disable it without writing some custom Java –  DrTech Mar 29 '13 at 18:14
    
I mean, is there a way to add the two together instead of having them multiplied? Custom java is fine, just need to know where to put it ;) –  sqwk Mar 30 '13 at 3:53
    
Can you gist a full recreation, with mapping, data, query, as curl statements? I'd like to understand exactly what is happening –  DrTech Mar 30 '13 at 8:13

1 Answer 1

OK - I've finally figured out what is happening. First, in your gist, your query doesn't match any of your documents, because of the lat/lon. I chose one document at random (323) and use the lat/lon values from there.

This is the explanation I get:

 - custom score, score mode [total]                                    |    0.8795
   - Score based on score mode Max and child doc range from 10 to 16   |    1.0000
     - Child[16]                                                       |    1.0000
   - custom score, product of:                                         |    0.2000
     - match filter: cache(object_max_rooms:[4 TO *])                  |    1.0000
     - scriptFactor                                                    |    0.2000
     - queryBoost                                                      |    1.0000
   - custom score, product of:                                         |    0.5714
     - match filter: cache(object_min_living_area:[* TO 125])          |    1.0000
     - scriptFactor                                                    |    0.5714
     - queryBoost                                                      |    1.0000
   - custom score, product of:                                         |    0.1081
     - match filter: cache(object_max_living_area:[125 TO *])          |    1.0000
     - scriptFactor                                                    |    0.1081
     - queryBoost                                                      |    1.0000

As you can see, the lat/lon matches exactly, so scores 1, and the scores from the custom_filters_score query are being totalled up nicely.

Then I changed the lat value from 50.0852386 to 50.0882386, and reran. Now the scores look like this:

 - custom score, score mode [total]                                    |    0.7081
   - Score based on score mode Max and child doc range from 10 to 16   |    0.8050
     - Child[16]                                                       |    0.8050
   - custom score, product of:                                         |    0.2000
     - match filter: cache(object_max_rooms:[4 TO *])                  |    1.0000
     - scriptFactor                                                    |    0.2000
     - queryBoost                                                      |    1.0000
   - custom score, product of:                                         |    0.5714
     - match filter: cache(object_min_living_area:[* TO 125])          |    1.0000
     - scriptFactor                                                    |    0.5714
     - queryBoost                                                      |    1.0000
   - custom score, product of:                                         |    0.1081
     - match filter: cache(object_max_living_area:[125 TO *])          |    1.0000
     - scriptFactor                                                    |    0.1081
     - queryBoost                                                      |    1.0000

So the score from the filters is being combined with the score from the query, and then normalized. This is to be expected. The score_mode only applies to the filters, not the combination of the filters and the query.

If you want to combine them exactly, then you would need to move the distance calculation out of the query into a filter under the custom_filters_score filters. The problem there is that the script for scoring won't have access to the nested places docs, so you would be unable to do that.

Why is the exact total so important? The _score should never be taken as an absolute value. It just reflects the relative importance of each document. You just need to tweak the impact of each clause until you're getting the "right" order for your requirements.

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Thanks for taking the time to test this. The exact total is not really important, yet a multiplication doesn't work, because then one component of getting the right order depends on another. Is there a way to loop over nested fields using mvel? (If I move the query into the filter under the custom_filters_score I'd need to do the calculations in a single script.) –  sqwk Mar 30 '13 at 12:45
    
No, unfortunately. Nested docs are separate docs internally. The doc in context is the root doc. It can't see the nested docs. You could use _source['..'] instead of _doc['...'] to get hold of the lat/lon values, but that will be considerably slower. –  DrTech Mar 30 '13 at 13:10

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