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Learning emotions using automated affect sensing techniques

Learning emotions using automated affect sensing techniquesvon Thomas Belin Sie sparen 18% des UVP sparen 18%
Über Learning emotions using automated affect sensing techniques

In a world progressively digitalised, it is arguable whether Humanity will one day need to be re-defined. If chemical processes, such as emotions, are one day understood by ¿digital beings¿, Humanity would probably enter the ¿Transisto-Sapiens¿ era. In this project, the focus is made on identifying feelings in texts. Extracted from Twitter, a social media allowing its community to answer the question: ¿what are you doing?¿ in 140 characters, these texts usually display a lack of grammatical structure. The classical approach considering tools such as a sentence parser or a POS tagger does not apply. Indeed, as low informational content is available, a too strict feature reduction policy would often result in no text at all. The interest is thus to evaluate the accuracy one can expect on a corpus not pre-processed at all. Focusing solely on surface features, a metric measuring the emotional content of a particular concept is required. To the best of the author¿s knowledge, none has been done so far. Using WordNet combined with the Plutchik affective model, a simple edge-based metric has thus been designed.

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  • Sprache:
  • Englisch
  • ISBN:
  • 9783659971327
  • Einband:
  • Taschenbuch
  • Seitenzahl:
  • 132
  • Veröffentlicht:
  • 11. Januar 2017
  • Abmessungen:
  • 150x8x220 mm.
  • Gewicht:
  • 215 g.
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Beschreibung von Learning emotions using automated affect sensing techniques

In a world progressively digitalised, it is arguable whether Humanity will one day need to be re-defined. If chemical processes, such as emotions, are one day understood by ¿digital beings¿, Humanity would probably enter the ¿Transisto-Sapiens¿ era. In this project, the focus is made on identifying feelings in texts. Extracted from Twitter, a social media allowing its community to answer the question: ¿what are you doing?¿ in 140 characters, these texts usually display a lack of grammatical structure. The classical approach considering tools such as a sentence parser or a POS tagger does not apply. Indeed, as low informational content is available, a too strict feature reduction policy would often result in no text at all. The interest is thus to evaluate the accuracy one can expect on a corpus not pre-processed at all. Focusing solely on surface features, a metric measuring the emotional content of a particular concept is required. To the best of the author¿s knowledge, none has been done so far. Using WordNet combined with the Plutchik affective model, a simple edge-based metric has thus been designed.

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