I'm using the Completion Suggester in Elasticsearch to allow partial word matching queries. In my index (products_index), I'd like to be able to query both the product_name field and the brand field. Here are my mappings:
POST /product_index
mappings: {
products: {
properties: {
brand: {
type: "string",
analyzer: "english"
},
product_name: {
type: "string",
analyzer: "english"
},
id: {
type: "long"
},
lookup_count: {
type: "long"
},
suggest: {
type: "completion",
analyzer: "simple",
payloads: true,
preserve_separators: true,
preserve_position_increments: true,
max_input_length: 50
},
upc: {
type: "string"
}
}
}
}
Here is my data:
POST /product_index/products/2
{
id: 2,
brand: "Coca-Cola",
product_name: "Classic Coke",
suggest: {
input: [
"Classic Coke",
"Coca-Cola"
],
output: "Classic Coke - Coca-Cola",
payload: {
id: 2,
product_name: "Classic Coke",
brand: "Coca-Cola",
popularity: 10
},
weight: 0
}
}
And here is my query:
POST /product_index/_search
"suggest": {
"product_suggest": {
"text": 'coca-co',
"completion": {
"field": 'suggest'
}
}
}
This works great except that I'd like to give the product_name field a higher weighting than the brand field. Is there any way I can achieve this? I have looked into this article on using bool queries but I'm quite new to Elasticsearch and unsure how I can apply that in the case of completion suggester.
Thanks a lot!
As redox said, the completion suggester is really simple and doesn't support entries boosting. My solution would be to make two suggester fields, one for brand and one for product name:
POST /product_index
{
"mappings": {
"products": {
"properties": {
"brand": {
"type": "string",
"analyzer": "english"
},
"product_name": {
"type": "string",
"analyzer": "english"
},
"id": {
"type": "long"
},
"lookup_count": {
"type": "long"
},
"product-suggest": {
"type": "completion",
"analyzer": "simple",
"payloads": true,
"preserve_separators": true,
"preserve_position_increments": true,
"max_input_length": 50
},
"brand-suggest": {
"type": "completion",
"analyzer": "simple",
"payloads": true,
"preserve_separators": true,
"preserve_position_increments": true,
"max_input_length": 50
},
"upc": {
"type": "string"
}
}
}
}
}
When indexing, fill both fields:
POST /product_index/products/2
{
"id": 2,
"brand": "Coca-Cola",
"product_name": "Classic Coke",
"brand-suggest": {
"input": [
"Coca-Cola"
],
"output": "Classic Coke - Coca-Cola",
"payload": {
"id": 2,
"product_name": "Classic Coke",
"brand": "Coca-Cola",
"popularity": 10
}
},
"product-suggest": {
"input": [
"Classic Coke"
],
"output": "Classic Coke - Coca-Cola",
"payload": {
"id": 2,
"product_name": "Classic Coke",
"brand": "Coca-Cola",
"popularity": 10
}
}
}
When querying, make one suggest on both the brand and product suggesters:
POST /product_index/_search
{
"suggest": {
"product_suggestion": {
"text": "coca-co",
"completion": {
"field": "product-suggest"
}
},
"brand_suggestion": {
"text": "coca-co",
"completion": {
"field": "brand-suggest"
}
}
}
}
You can append the list of suggestions of brand-suggestion to the one of product suggestion, after having removed the duplicates, to have list of suggestions with only relevant suggestions, no duplicates and the product suggestions first.
Another solution would be to use a query with boosting on brand and product, instead of using suggesters. This implementation is however slower since it doesn't use suggesters.