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docs(natural-language-understanding): Add newest generated doc changes
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natural-language-understanding/src/main/java/com/ibm/watson/developer_cloud/natural_language_understanding/v1/NaturalLanguageUnderstanding.java

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* Language Understanding will give you results for the features you request. The service cleans HTML content before
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* analysis by default, so the results can ignore most advertisements and other unwanted content.
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*
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* ### Concepts
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* Identify general concepts that are referenced or alluded to in your content. Concepts that are detected typically
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* have an associated link to a DBpedia resource.
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*
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* ### Entities
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* Detect important people, places, geopolitical entities and other types of entities in your content. Entity detection
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* recognizes consecutive coreferences of each entity. For example, analysis of the following text would count "Barack
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* Obama" and "He" as the same entity:
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*
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* "Barack Obama was the 44th President of the United States. He took office in January 2009."
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*
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* ### Keywords
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* Determine the most important keywords in your content. Keyword phrases are organized by relevance in the results.
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*
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* ### Categories
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* Categorize your content into a hierarchical 5-level taxonomy. For example, "Leonardo DiCaprio won an Oscar" returns
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* "/art and entertainment/movies and tv/movies" as the most confident classification.
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*
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* ### Sentiment
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* Determine whether your content conveys postive or negative sentiment. Sentiment information can be returned for
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* detected entities, keywords, or user-specified target phrases found in the text.
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*
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* ### Emotion
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* Detect anger, disgust, fear, joy, or sadness that is conveyed by your content. Emotion information can be returned
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* for detected entities, keywords, or user-specified target phrases found in the text.
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*
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* ### Relations
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* Recognize when two entities are related, and identify the type of relation. For example, you can identify an
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* "awardedTo" relation between an award and its recipient.
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*
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* ### Semantic Roles
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* Parse sentences into subject-action-object form, and identify entities and keywords that are subjects or objects of
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* an action.
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*
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* ### Metadata
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* Get author information, publication date, and the title of your text/HTML content.
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* You can create <a target="_blank"
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* href="https://www.ibm.com/watson/developercloud/doc/natural-language-understanding/customizing.html">custom
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* models</a> with Watson Knowledge Studio that can be used to detect custom entities and relations in Natural Language
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* Understanding.
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*
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* @version v1
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* @see <a href="http://www.ibm.com/watson/developercloud/natural-language-understanding.html">Natural Language
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/**
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* Analyze text, HTML, or a public webpage.
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*
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* Analyzes text, HTML, or a public webpage with one or more text analysis features.
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* Analyzes text, HTML, or a public webpage with one or more text analysis features. ### Concepts Identify general
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* concepts that are referenced or alluded to in your content. Concepts that are detected typically have an associated
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* link to a DBpedia resource. ### Emotion Detect anger, disgust, fear, joy, or sadness that is conveyed by your
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* content. Emotion information can be returned for detected entities, keywords, or user-specified target phrases
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* found in the text. ### Entities Detect important people, places, geopolitical entities and other types of entities
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* in your content. Entity detection recognizes consecutive coreferences of each entity. For example, analysis of the
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* following text would count \"Barack Obama\" and \"He\" as the same entity: \"Barack Obama was the 44th President of
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* the United States. He took office in January 2009.\" ### Keywords Determine the most important keywords in your
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* content. Keyword phrases are organized by relevance in the results. ### Metadata Get author information,
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* publication date, and the title of your text/HTML content. ### Relations Recognize when two entities are related,
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* and identify the type of relation. For example, you can identify an \"awardedTo\" relation between an award and its
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* recipient. ### Semantic Roles Parse sentences into subject-action-object form, and identify entities and keywords
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* that are subjects or objects of an action. ### Sentiment Determine whether your content conveys postive or negative
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* sentiment. Sentiment information can be returned for detected entities, keywords, or user-specified target phrases
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* found in the text. ### Categories Categorize your content into a hierarchical 5-level taxonomy. For example,
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* \"Leonardo DiCaprio won an Oscar\" returns \"/art and entertainment/movies and tv/movies\" as the most confident
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* classification.
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*
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* @param analyzeOptions the {@link AnalyzeOptions} containing the options for the call
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* @return a {@link ServiceCall} with a response type of {@link AnalysisResults}

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