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  2. Semantic analysis (machine learning) - Wikipedia
Semantic analysis (machine learning) - Wikipedia
From Wikipedia, the free encyclopedia
Machine learning method for concept approximation
For other uses, see Semantic analysis (disambiguation).
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Find sources: "Semantic analysis" machine learning – news · newspapers · books · scholar · JSTOR
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Semantics
  • Linguistic
  • Logical
Subfields
  • Computational
  • Lexical
    • Lexis
    • Lexicology
  • Statistical
  • Structural
Topics
  • Analysis
  • Compositionality
  • Context
    • Prototype theory
    • Force dynamics
  • Semantic feature
  • Semantic gap
  • Theory of descriptions
Analysis
  • Latent
  • Computational
  • Machine learning
Applications
  • Desktop
  • File system
  • Matching
  • Parsing
  • Querying
    • web
    • wiki
  • Similarity
Semantics of
programming languages
Types
  • Action
  • Algebraic
  • Axiomatic
  • Categorical
  • Concurrency
  • Denotational
  • Game
  • Operational
  • Predicate transformational
Theory
  • Abstract interpretation
  • Abstract semantic graph
  • Language
  • Linguistics
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In machine learning, semantic analysis of a text corpus is the task of building structures that approximate concepts from a large set of documents. It generally does not involve prior semantic understanding of the documents.

Semantic analysis strategies include:

  • Metalanguages based on first-order logic, which can analyze the speech of humans.[1]: 93- 
  • Understanding the semantics of a text is symbol grounding: if language is grounded, it is equal to recognizing a machine-readable meaning. For the restricted domain of spatial analysis, a computer-based language understanding system was demonstrated.[2]: 123 
  • Latent semantic analysis (LSA), a class of techniques where documents are represented as vectors in a term space. A prominent example is probabilistic latent semantic analysis (PLSA).
  • Latent Dirichlet allocation, which involves attributing document terms to topics.
  • n-grams and hidden Markov models, which work by representing the term stream as a Markov chain, in which each term is derived from preceding terms.

See also

[edit]
  • Explicit semantic analysis
  • Information extraction
  • Semantic similarity
  • Stochastic semantic analysis
  • Ontology learning

References

[edit]
  1. ^ Nitin Indurkhya; Fred J. Damerau (22 February 2010). Handbook of Natural Language Processing. CRC Press. ISBN 978-1-4200-8593-8.
  2. ^ Michael Spranger (15 June 2016). The evolution of grounded spatial language. Language Science Press. ISBN 978-3-946234-14-2.
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Natural language processing
General terms
  • AI-complete
  • Bag-of-words
  • n-gram
    • Bigram
    • Trigram
  • Computational linguistics
  • Natural language understanding
  • Stop words
  • Text processing
Text analysis
  • Argument mining
  • Collocation extraction
  • Concept mining
  • Coreference resolution
  • Deep linguistic processing
  • Distant reading
  • Information extraction
  • Named-entity recognition
  • Ontology learning
  • Parsing
    • semantic
    • syntactic
  • Part-of-speech tagging
  • Semantic analysis
  • Semantic role labeling
  • Semantic decomposition
  • Semantic similarity
  • Sentiment analysis
  • Terminology extraction
  • Text mining
  • Textual entailment
  • Truecasing
  • Word-sense disambiguation
  • Word-sense induction
Text segmentation
  • Compound-term processing
  • Lemmatisation
  • Lexical analysis
  • Text chunking
  • Stemming
  • Sentence segmentation
  • Word segmentation
Automatic summarization
  • Multi-document summarization
  • Sentence extraction
  • Text simplification
Machine translation
  • Computer-assisted
  • Example-based
  • Rule-based
  • Statistical
  • Transfer-based
  • Neural
Distributional semantics models
  • BERT
  • Document-term matrix
  • Explicit semantic analysis
  • fastText
  • GloVe
  • Language model
    • large
    • small
  • Latent semantic analysis
  • Long short-term memory
  • Seq2seq
  • Transformer
  • Word embedding
  • Word2vec
Language resources,
datasets and corpora
Types and
standards
  • Corpus linguistics
  • Lexical resource
  • Linguistic Linked Open Data
  • Machine-readable dictionary
  • Parallel text
  • PropBank
  • Semantic network
  • Simple Knowledge Organization System
  • Speech corpus
  • Text corpus
  • Thesaurus (information retrieval)
  • Treebank
  • Universal Dependencies
Data
  • BabelNet
  • Bank of English
  • DBpedia
  • FrameNet
  • Google Ngram Viewer
  • UBY
  • WordNet
  • Wikidata
Automatic identification
and data capture
  • Speech recognition
  • Speech segmentation
  • Speech synthesis
  • Natural language generation
  • Optical character recognition
Topic model
  • Document classification
  • Latent Dirichlet allocation
  • Pachinko allocation
Computer-assisted
reviewing
  • Automated essay scoring
  • Concordancer
  • Grammar checker
  • Predictive text
  • Pronunciation assessment
  • Spell checker
Natural language
user interface
  • Chatbot
  • Interactive fiction
  • Question answering
  • Virtual assistant
  • Voice user interface
Related
  • Formal semantics
  • Hallucination
  • Natural Language Toolkit
  • spaCy


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