Matches in SemOpenAlex for { <https://semopenalex.org/work/W2787234785> ?p ?o ?g. }
- W2787234785 abstract "Emotions are perceptions of changes in the human body such as heart rate, breathing rate, perspiration, and hormone levels. These conscious experiences are complex and studied extensively in different fields including computer science. Lack of facial expressions and voice modulations make detecting emotions from text a challenging problem. However, as humans are moving towards a digital era, with increasing mobile communication systems, it is essential that these digital agents are emotion aware, and respond accordingly. In this paper, we propose a novel approach to detect emotions like happy or sad in texts using an LSTM based Deep Learning model. Our approach consists of semi-automated techniques to gather training data for our model. We experiment with different embeddings and propose a solution using the best embedding for the task. Our work is evaluated on real-world tweets and significantly outperforms traditional Machine Learning baselines as well as other off-the-shelf Deep Learning models." @default.
- W2787234785 created "2018-02-23" @default.
- W2787234785 creator A5044973780 @default.
- W2787234785 creator A5064683413 @default.
- W2787234785 creator A5073698657 @default.
- W2787234785 creator A5081316458 @default.
- W2787234785 date "2017-07-21" @default.
- W2787234785 modified "2023-09-24" @default.
- W2787234785 title "Emotion Detection from Text" @default.
- W2787234785 cites W104683736 @default.
- W2787234785 cites W17944974 @default.
- W2787234785 cites W1832693441 @default.
- W2787234785 cites W1966797434 @default.
- W2787234785 cites W1969769481 @default.
- W2787234785 cites W1971222444 @default.
- W2787234785 cites W2064675550 @default.
- W2787234785 cites W2079521622 @default.
- W2787234785 cites W2101234009 @default.
- W2787234785 cites W2112251034 @default.
- W2787234785 cites W2119821739 @default.
- W2787234785 cites W2131774270 @default.
- W2787234785 cites W2141403362 @default.
- W2787234785 cites W2163605009 @default.
- W2787234785 cites W2168872737 @default.
- W2787234785 cites W2191779256 @default.
- W2787234785 cites W2217829525 @default.
- W2787234785 cites W2250539671 @default.
- W2787234785 cites W2250879510 @default.
- W2787234785 cites W2293723806 @default.
- W2787234785 cites W2321563513 @default.
- W2787234785 cites W2331804107 @default.
- W2787234785 cites W2404480901 @default.
- W2787234785 cites W2468328197 @default.
- W2787234785 cites W2469609794 @default.
- W2787234785 cites W2557283755 @default.
- W2787234785 cites W2595767595 @default.
- W2787234785 cites W2950133940 @default.
- W2787234785 cites W50950926 @default.
- W2787234785 hasPublicationYear "2017" @default.
- W2787234785 type Work @default.
- W2787234785 sameAs 2787234785 @default.
- W2787234785 citedByCount "3" @default.
- W2787234785 countsByYear W27872347852018 @default.
- W2787234785 countsByYear W27872347852019 @default.
- W2787234785 crossrefType "posted-content" @default.
- W2787234785 hasAuthorship W2787234785A5044973780 @default.
- W2787234785 hasAuthorship W2787234785A5064683413 @default.
- W2787234785 hasAuthorship W2787234785A5073698657 @default.
- W2787234785 hasAuthorship W2787234785A5081316458 @default.
- W2787234785 hasConcept C107457646 @default.
- W2787234785 hasConcept C108583219 @default.
- W2787234785 hasConcept C119857082 @default.
- W2787234785 hasConcept C154945302 @default.
- W2787234785 hasConcept C15744967 @default.
- W2787234785 hasConcept C162324750 @default.
- W2787234785 hasConcept C169760540 @default.
- W2787234785 hasConcept C187736073 @default.
- W2787234785 hasConcept C195704467 @default.
- W2787234785 hasConcept C26760741 @default.
- W2787234785 hasConcept C2777438025 @default.
- W2787234785 hasConcept C2780451532 @default.
- W2787234785 hasConcept C28490314 @default.
- W2787234785 hasConcept C2988148770 @default.
- W2787234785 hasConcept C41008148 @default.
- W2787234785 hasConcept C41608201 @default.
- W2787234785 hasConcept C66402592 @default.
- W2787234785 hasConceptScore W2787234785C107457646 @default.
- W2787234785 hasConceptScore W2787234785C108583219 @default.
- W2787234785 hasConceptScore W2787234785C119857082 @default.
- W2787234785 hasConceptScore W2787234785C154945302 @default.
- W2787234785 hasConceptScore W2787234785C15744967 @default.
- W2787234785 hasConceptScore W2787234785C162324750 @default.
- W2787234785 hasConceptScore W2787234785C169760540 @default.
- W2787234785 hasConceptScore W2787234785C187736073 @default.
- W2787234785 hasConceptScore W2787234785C195704467 @default.
- W2787234785 hasConceptScore W2787234785C26760741 @default.
- W2787234785 hasConceptScore W2787234785C2777438025 @default.
- W2787234785 hasConceptScore W2787234785C2780451532 @default.
- W2787234785 hasConceptScore W2787234785C28490314 @default.
- W2787234785 hasConceptScore W2787234785C2988148770 @default.
- W2787234785 hasConceptScore W2787234785C41008148 @default.
- W2787234785 hasConceptScore W2787234785C41608201 @default.
- W2787234785 hasConceptScore W2787234785C66402592 @default.
- W2787234785 hasLocation W27872347851 @default.
- W2787234785 hasOpenAccess W2787234785 @default.
- W2787234785 hasPrimaryLocation W27872347851 @default.
- W2787234785 hasRelatedWork W104414195 @default.
- W2787234785 hasRelatedWork W2306831900 @default.
- W2787234785 hasRelatedWork W2571740133 @default.
- W2787234785 hasRelatedWork W2738554243 @default.
- W2787234785 hasRelatedWork W2809753900 @default.
- W2787234785 hasRelatedWork W2840327007 @default.
- W2787234785 hasRelatedWork W2887030499 @default.
- W2787234785 hasRelatedWork W2897636448 @default.
- W2787234785 hasRelatedWork W2905807898 @default.
- W2787234785 hasRelatedWork W2918378401 @default.
- W2787234785 hasRelatedWork W2980463662 @default.
- W2787234785 hasRelatedWork W3033730745 @default.
- W2787234785 hasRelatedWork W3040449237 @default.
- W2787234785 hasRelatedWork W3089539592 @default.