Elasticsearch boost but only one occurrence of term per field - elasticsearch

I'm currently sending the following query to ElasticSearch:
{
"size": 100,
"query": {
"function_score": {
"query": {
"simple_query_string": {
"query": "term1",
"fields": ["field1^10", "field2^5"]
}
}]
}
}
}
Now imagine I have two documents.
Document1 contains one occurrence of "term1" on field1
Document2 contains three occurrences of "term1" on field2
What I get: Elastic returns Document2 above Document1
What I want: Document1 above Document2.
To achieve this, Elastic should not multiply the number of occurrences of "term1" just that it "appears". What should I do to my query?

There seems to be two kinds of options to force Elastic not give more weight based on number of occurrences of a term.
The first one is to map the fields to disable term frequency (TF): https://www.elastic.co/guide/en/elasticsearch/guide/current/scoring-theory.html#tfidf
The second one is to use the Constant Score Query: https://www.elastic.co/guide/en/elasticsearch/guide/current/ignoring-tfidf.html

Related

What is the difference between must and filter in Query DSL in elasticsearch?

I am new to elastic search and I am confused between must and filter. I want to perform an and operation between my terms, so I did this
POST /xyz/_search
{
"query": {
"bool": {
"must": [
{
"term": {
"city": "city1"
}
},
{
"term": {
"saleType": "sale_type1"
}
}
]
}
}
}
which gave me the required results matching both the terms, and on using filter like this
POST /xyz/_search
{
"query": {
"bool": {
"must": [
{
"term": {
"city": "city1"
}
}
],
"filter": {
"term": {
"saleType": "sale_type1"
}
}
}
}
}
I get the same result, so when should I use must and when should I use filter? What is the difference?
must contributes to the score. In filter, the score of the query is ignored.
In both must and filter, the clause(query) must appear in matching documents. This is the reason for getting same results.
You may check this link
Score
The relevance score of each document is represented by a positive floating-point number called the _score. The higher the _score, the more relevant the document.
A query clause generates a _score for each document.
To know how score is calculated, refer this link
must returns a score for every matching document. This score helps you rank the matching documents, and compare the relative relevance between documents (using the magnitude of the score of each document).
With this, one can say, Doc 1 is how many times more relevant than Doc 2. Or that Doc 1 to 7 are of much higher relevancy than Doc 8+.
For how the relative score is determined, you can refer to the references below.
Briefly, it is related to the number of term occurrences in the document, the document length, and the average number of term occurrences in your database index.
filter doesn't return a score. All one can say is, all matching documents are of relevance. But it won't help in evaluating if one is more relevant than the other. You can think of filter as a must with only 2 scores: zero or non-zero, and where all zero-scored documents are dropped.
filter is helpful if you just want to whitelist/blacklist for e.g., all documents belonging to the topic "pets".
In summary, there are 3 points that will help you in deciding when to use what:
must is your only choice when comparing/ranking documents by relevance
filter excludes all documents that don't match
filter is a lot faster because Elasticsearch doesn't need to compute the relative score
References:
Query vs Filter: https://www.elastic.co/guide/en/elasticsearch/reference/current/query-filter-context.html
Computation of Relevance: https://www.infoq.com/articles/similarity-scoring-elasticsearch/

Elasticsearch how to match documents for which the field tokens are a sub-set of the query tokens

I have a keyword/key-phrase field I tokenize using standard analyser. I want this field to match if if there is a search phrase that has all tokens of this field in it.
For example if the field value is "veni, vidi, vici" and the search phrase is "Ceaser veni,vidi,vici" I want this search phrase to match but search phrase "veni, vidi" not match.
I also need "vidi, veni, vici" (weird!) to match. So the positions and ordering of the terms is not really important. A phrase match would not quite work for me I think.
I can use "bool query" with "minimum_should_match" parameter for this specific example but that is not really what I want as minimum should match is about ratio/number of tokens in the search phrase.
Pure ES solution would go like this. You will need two requests.
1) First you need to pass user query through analyze api to get all the search tokens.
curl -XGET 'localhost:9200/_analyze' -d '
{
"analyzer" : "standard",
"text" : "Ceaser veni,vidi,vici"
}'
you will get 4 tokens ceaser, veni, vidi, vici . You need to pass these tokens as an array to next search request.
2) We need to search for documents whose tokens are subset of search tokens.
{
"query": {
"filtered": {
"filter": {
"bool": {
"must": [
{
"query": {
"match": {
"title": "Ceaser veni,vidi,vici"
}
}
},
{
"script": {
"script": "if(search_tokens.containsAll(doc['title'].values)){return true;}",
"params": {
"search_tokens": [
"ceaser",
"veni",
"vidi",
"vici"
]
}
}
}
]
}
}
}
}
}
Here job of first match query inside the filter is to narrow down the documents on which script should run. containsAll method will check if the documents tokens are sublist of search tokens. This will be slow but will do the job with your current set up. One big improvement you can do is store tokens as an array so that doc['title'].values can be replaced with that field which will improve the script.
Hope this helps!
No built-in solution but this works:
Add an extra field with the number of terms in the field for each document. So in your "veni, vidi, vici" example, you would have a field like "field_term_count" : 3.
Perform a separate match search for each token in the search query.
Sum the number of searches that matched for each document with at least one match (e.g. a hashtable with key of document ID and value of count).
Compare the number of matches in 3 to the "field_term_count" field for each of the documents with matches. If they are equal then the document is a match.
Then "Ceaser veni,vidi,vici" will match but the search phrases "veni, vidi" will not, as desired. It should be quite fast for reasonable numbers of matches.

How to filter results based on frequency of repeating terms in an array in elasticsearch

I have an array field with a lot of keywords and i need to sort the documents on the basis on how many times a particular keyword repetation in those arrays.
For eg,if my field name is "nationality" and for document 1, it consists of the following
doc1
nationality :
["US","UK","Australia","India","US","US"]
and for doc2
nationality:
["US","UK","US","US","US","China"]
I want only those documents to be shown where the term "US" occurs more than 3 times. That would make only doc2 to be shown. How to do this?
You can use scripting for this to be implemented.
{
"query": {
"filtered": {
"filter": {
"script": {
"script": "_index['nationality']['US'].tf() > 3"
}
}
}
}
}
Here in this scripy the array "nationality" is checked for the term "US" and the count is taken by tf (term frequency). Now only the documents with term frequency greater than three are shown in the results. You can learn more about the filter operations here

How to sort elastic search results by score + boost + field?

Given an index of books that have a title, an author, and a description, I'd like the resulting search results to be sorted this way:
all books that match the title sorted by downloads (a numeric value)
all books that match on author sorted by downloads
all books that match on description sorted by downloads
I use the search query below, but the problem is that each entry has a different score thus making sorting by downloads irrelevant.
e.g. when the search term is 'sorting' - title: 'sorting in elastic search' will score higher than title: 'postgresql sorting is awesome' (because of the word position).
query = QueryBuilders.multiMatchQuery(queryString, "title^16", "author^8", "description^4")
elasticClient.prepareSearch(Index)
.setTypes(Book)
.setQuery(query)
.addSort(SortBuilders.scoreSort())
.addSort(SortBuilders.fieldSort("downloads").order(SortOrder.DESC))
How do I construct my query so that I could get the desired book sorting?
I use standard analysers and I need to the search query to be analysed, also I will have to handle multi-word search query strings.
Thx.
What you need here is a way to compute score based on three weighted field and a numeric field. Sort will sum the score obtained from both , due to which if either one of them is too large , it will supersede the other.
Hence a better approach would be to multiple downloads with the score obtained by the match.
So i would recommend function score query -
{
"query": {
"function_score": {
"query": {
"multi_match": {
"query": "sorting",
"fields": [
"title^16",
"author^8",
"description^4"
]
}
},
"function": [
{
"field_value_factor": {
"field": "downloads"
}
}
],
"boost_mode": "multiply"
}
}
}
This will compute the score based on all three fields. And then multiply that score with the value in download field to get the final score. The multiply boost_mode decides how the value computed by functions are clubbed together with the score computed by query.

Constant Score Query elasticsearch boosting

My understanding of Constant Score Query in elasticsearch is that boost factor would be assigned as score for every matching query. The documentation says:
A query that wraps a filter or another query and simply returns a constant score equal to the query boost for every document in the filter.
However when I send this query:
"query": {
"constant_score": {
"filter": {
"term": {
"source": "BBC"
}
},
"boost": 3
}
},
"fields": ["title", "source"]
all the matching documents are given a score of 1?! I cannot figure out what I am doing wrong, and had also tried with query instead of filter in constant_score.
Scores are only meant to be relative to all other scores in a given result set, so a result set where everything has the score of 3 is the same as a result set where everything has the score of 1.
Really, the only purpose of the relevance _score is to sort the results of the current query in the correct order. You should not try to compare the relevance scores from different queries. - Elasticsearch Guide
Either the constant score is being ignored because it's not being combined with another query or it's being normalized. As #keety said, check to the output of explain to see exactly what's going on.
Constant score query gives equal score to any matching document irrespective any scoring factors like TF, IDF etc. This can be used when you don't care whether how much a doc matched but just if a doc matched or not and give a score too, unlike filter.
If you want score as 3 literally for all the matching documents for a particular query, then you should be using function score query, something like
"query": {
"function_score": {
"functions": [
{
"filter": { "term": { "source": "BBC" } },
"weight": 3
}
]
}
...
}

Resources