321 lines
9.7 KiB
Plaintext
321 lines
9.7 KiB
Plaintext
[[mapper-annotated-text]]
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=== Mapper Annotated Text Plugin
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experimental[]
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The mapper-annotated-text plugin provides the ability to index text that is a
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combination of free-text and special markup that is typically used to identify
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items of interest such as people or organisations (see NER or Named Entity Recognition
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tools).
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The elasticsearch markup allows one or more additional tokens to be injected, unchanged, into the token
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stream at the same position as the underlying text it annotates.
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:plugin_name: mapper-annotated-text
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include::install_remove.asciidoc[]
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[[mapper-annotated-text-usage]]
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==== Using the `annotated-text` field
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The `annotated-text` tokenizes text content as per the more common `text` field (see
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"limitations" below) but also injects any marked-up annotation tokens directly into
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the search index:
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[source,console]
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--------------------------
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PUT my_index
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{
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"mappings": {
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"properties": {
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"my_field": {
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"type": "annotated_text"
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}
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}
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}
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}
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--------------------------
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Such a mapping would allow marked-up text eg wikipedia articles to be indexed as both text
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and structured tokens. The annotations use a markdown-like syntax using URL encoding of
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one or more values separated by the `&` symbol.
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We can use the "_analyze" api to test how an example annotation would be stored as tokens
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in the search index:
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[source,js]
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--------------------------
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GET my_index/_analyze
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{
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"field": "my_field",
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"text":"Investors in [Apple](Apple+Inc.) rejoiced."
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}
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--------------------------
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// NOTCONSOLE
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Response:
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[source,js]
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--------------------------------------------------
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{
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"tokens": [
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{
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"token": "investors",
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"start_offset": 0,
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"end_offset": 9,
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"type": "<ALPHANUM>",
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"position": 0
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},
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{
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"token": "in",
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"start_offset": 10,
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"end_offset": 12,
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"type": "<ALPHANUM>",
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"position": 1
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},
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{
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"token": "Apple Inc.", <1>
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"start_offset": 13,
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"end_offset": 18,
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"type": "annotation",
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"position": 2
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},
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{
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"token": "apple",
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"start_offset": 13,
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"end_offset": 18,
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"type": "<ALPHANUM>",
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"position": 2
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},
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{
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"token": "rejoiced",
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"start_offset": 19,
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"end_offset": 27,
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"type": "<ALPHANUM>",
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"position": 3
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}
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]
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}
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--------------------------------------------------
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// NOTCONSOLE
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<1> Note the whole annotation token `Apple Inc.` is placed, unchanged as a single token in
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the token stream and at the same position (position 2) as the text token (`apple`) it annotates.
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We can now perform searches for annotations using regular `term` queries that don't tokenize
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the provided search values. Annotations are a more precise way of matching as can be seen
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in this example where a search for `Beck` will not match `Jeff Beck` :
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[source,console]
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--------------------------
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# Example documents
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PUT my_index/_doc/1
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{
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"my_field": "[Beck](Beck) announced a new tour"<1>
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}
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PUT my_index/_doc/2
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{
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"my_field": "[Jeff Beck](Jeff+Beck&Guitarist) plays a strat"<2>
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}
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# Example search
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GET my_index/_search
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{
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"query": {
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"term": {
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"my_field": "Beck" <3>
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}
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}
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}
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--------------------------
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<1> As well as tokenising the plain text into single words e.g. `beck`, here we
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inject the single token value `Beck` at the same position as `beck` in the token stream.
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<2> Note annotations can inject multiple tokens at the same position - here we inject both
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the very specific value `Jeff Beck` and the broader term `Guitarist`. This enables
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broader positional queries e.g. finding mentions of a `Guitarist` near to `strat`.
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<3> A benefit of searching with these carefully defined annotation tokens is that a query for
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`Beck` will not match document 2 that contains the tokens `jeff`, `beck` and `Jeff Beck`
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WARNING: Any use of `=` signs in annotation values eg `[Prince](person=Prince)` will
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cause the document to be rejected with a parse failure. In future we hope to have a use for
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the equals signs so wil actively reject documents that contain this today.
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[[mapper-annotated-text-tips]]
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==== Data modelling tips
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===== Use structured and unstructured fields
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Annotations are normally a way of weaving structured information into unstructured text for
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higher-precision search.
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`Entity resolution` is a form of document enrichment undertaken by specialist software or people
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where references to entities in a document are disambiguated by attaching a canonical ID.
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The ID is used to resolve any number of aliases or distinguish between people with the
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same name. The hyperlinks connecting Wikipedia's articles are a good example of resolved
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entity IDs woven into text.
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These IDs can be embedded as annotations in an annotated_text field but it often makes
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sense to include them in dedicated structured fields to support discovery via aggregations:
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[source,console]
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--------------------------
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PUT my_index
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{
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"mappings": {
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"properties": {
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"my_unstructured_text_field": {
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"type": "annotated_text"
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},
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"my_structured_people_field": {
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"type": "text",
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"fields": {
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"keyword" : {
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"type": "keyword"
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}
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}
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}
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}
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}
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}
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--------------------------
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Applications would then typically provide content and discover it as follows:
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[source,console]
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--------------------------
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# Example documents
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PUT my_index/_doc/1
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{
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"my_unstructured_text_field": "[Shay](%40kimchy) created elasticsearch",
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"my_twitter_handles": ["@kimchy"] <1>
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}
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GET my_index/_search
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{
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"query": {
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"query_string": {
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"query": "elasticsearch OR logstash OR kibana",<2>
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"default_field": "my_unstructured_text_field"
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}
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},
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"aggregations": {
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"top_people" :{
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"significant_terms" : { <3>
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"field" : "my_twitter_handles.keyword"
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}
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}
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}
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}
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--------------------------
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<1> Note the `my_twitter_handles` contains a list of the annotation values
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also used in the unstructured text. (Note the annotated_text syntax requires escaping).
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By repeating the annotation values in a structured field this application has ensured that
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the tokens discovered in the structured field can be used for search and highlighting
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in the unstructured field.
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<2> In this example we search for documents that talk about components of the elastic stack
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<3> We use the `my_twitter_handles` field here to discover people who are significantly
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associated with the elastic stack.
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===== Avoiding over-matching annotations
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By design, the regular text tokens and the annotation tokens co-exist in the same indexed
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field but in rare cases this can lead to some over-matching.
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The value of an annotation often denotes a _named entity_ (a person, place or company).
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The tokens for these named entities are inserted untokenized, and differ from typical text
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tokens because they are normally:
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* Mixed case e.g. `Madonna`
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* Multiple words e.g. `Jeff Beck`
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* Can have punctuation or numbers e.g. `Apple Inc.` or `@kimchy`
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This means, for the most part, a search for a named entity in the annotated text field will
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not have any false positives e.g. when selecting `Apple Inc.` from an aggregation result
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you can drill down to highlight uses in the text without "over matching" on any text tokens
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like the word `apple` in this context:
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the apple was very juicy
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However, a problem arises if your named entity happens to be a single term and lower-case e.g. the
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company `elastic`. In this case, a search on the annotated text field for the token `elastic`
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may match a text document such as this:
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he fired an elastic band
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To avoid such false matches users should consider prefixing annotation values to ensure
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they don't name clash with text tokens e.g.
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[elastic](Company_elastic) released version 7.0 of the elastic stack today
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[[mapper-annotated-text-highlighter]]
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==== Using the `annotated` highlighter
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The `annotated-text` plugin includes a custom highlighter designed to mark up search hits
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in a way which is respectful of the original markup:
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[source,console]
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--------------------------
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# Example documents
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PUT my_index/_doc/1
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{
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"my_field": "The cat sat on the [mat](sku3578)"
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}
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GET my_index/_search
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{
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"query": {
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"query_string": {
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"query": "cats"
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}
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},
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"highlight": {
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"fields": {
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"my_field": {
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"type": "annotated", <1>
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"require_field_match": false
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}
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}
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}
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}
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--------------------------
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<1> The `annotated` highlighter type is designed for use with annotated_text fields
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The annotated highlighter is based on the `unified` highlighter and supports the same
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settings but does not use the `pre_tags` or `post_tags` parameters. Rather than using
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html-like markup such as `<em>cat</em>` the annotated highlighter uses the same
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markdown-like syntax used for annotations and injects a key=value annotation where `_hit_term`
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is the key and the matched search term is the value e.g.
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The [cat](_hit_term=cat) sat on the [mat](sku3578)
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The annotated highlighter tries to be respectful of any existing markup in the original
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text:
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* If the search term matches exactly the location of an existing annotation then the
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`_hit_term` key is merged into the url-like syntax used in the `(...)` part of the
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existing annotation.
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* However, if the search term overlaps the span of an existing annotation it would break
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the markup formatting so the original annotation is removed in favour of a new annotation
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with just the search hit information in the results.
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* Any non-overlapping annotations in the original text are preserved in highlighter
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selections
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[[mapper-annotated-text-limitations]]
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==== Limitations
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The annotated_text field type supports the same mapping settings as the `text` field type
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but with the following exceptions:
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* No support for `fielddata` or `fielddata_frequency_filter`
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* No support for `index_prefixes` or `index_phrases` indexing
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