Matches in SemOpenAlex for { <https://semopenalex.org/work/W2949272442> ?p ?o ?g. }
Showing items 1 to 80 of
80
with 100 items per page.
- W2949272442 abstract "This paper describes a novel approach to systematically improve information interactions based solely on its wording. Following an interdisciplinary literature review, we recognized three key attributes of words that drive user engagement: (1) Novelty (2) Familiarity (3) Emotionality. Based on these attributes, we developed a model to systematically improve a given content using computational linguistics, natural language processing (NLP) and text analysis (word frequency, sentiment analysis and lexical substitution). We conducted a pilot study (n=216) in which the model was used to formalize evaluation and optimization of academic titles. A between-group design (A/B testing) was used to compare responses to the original and modified (treatment) titles. Data was collected for selection and evaluation (User Engagement Scale). The pilot results suggest that user engagement with digital information is fostered by, and perhaps dependent upon, the wording being used. They also provide empirical support that engaging content can be systematically evaluated and produced. The preliminary results show that the modified (treatment) titles had significantly higher scores for information use and user engagement (selection and evaluation). We propose that computational linguistics is a useful approach for optimizing information interactions. The empirically based insights can inform the development of digital content strategies, thereby improving the success of information interactions.elop more sophisticated interaction measures." @default.
- W2949272442 created "2019-06-27" @default.
- W2949272442 creator A5004406376 @default.
- W2949272442 creator A5028595585 @default.
- W2949272442 date "2019-01-01" @default.
- W2949272442 modified "2023-09-27" @default.
- W2949272442 title "Systematic Improvement of User Engagement with Academic Titles Using Computational Linguistics" @default.
- W2949272442 cites W1989163306 @default.
- W2949272442 cites W1991377870 @default.
- W2949272442 cites W2014638150 @default.
- W2949272442 cites W2018553663 @default.
- W2949272442 cites W2041563290 @default.
- W2949272442 cites W2041946752 @default.
- W2949272442 cites W2096452841 @default.
- W2949272442 cites W2121131916 @default.
- W2949272442 cites W2124902375 @default.
- W2949272442 cites W2126891095 @default.
- W2949272442 cites W2133469585 @default.
- W2949272442 cites W2158342607 @default.
- W2949272442 cites W2169576299 @default.
- W2949272442 cites W2326952876 @default.
- W2949272442 cites W2401142528 @default.
- W2949272442 cites W2490492910 @default.
- W2949272442 cites W2505360303 @default.
- W2949272442 cites W2517335722 @default.
- W2949272442 cites W2565013451 @default.
- W2949272442 cites W2754638385 @default.
- W2949272442 cites W2778768471 @default.
- W2949272442 cites W2782898451 @default.
- W2949272442 cites W2800791576 @default.
- W2949272442 cites W2811278269 @default.
- W2949272442 cites W2943202876 @default.
- W2949272442 cites W2972139538 @default.
- W2949272442 cites W3192963099 @default.
- W2949272442 cites W86205303 @default.
- W2949272442 doi "https://doi.org/10.28945/4338" @default.
- W2949272442 hasPublicationYear "2019" @default.
- W2949272442 type Work @default.
- W2949272442 sameAs 2949272442 @default.
- W2949272442 citedByCount "0" @default.
- W2949272442 crossrefType "proceedings-article" @default.
- W2949272442 hasAuthorship W2949272442A5004406376 @default.
- W2949272442 hasAuthorship W2949272442A5028595585 @default.
- W2949272442 hasBestOaLocation W29492724421 @default.
- W2949272442 hasConcept C154945302 @default.
- W2949272442 hasConcept C155092808 @default.
- W2949272442 hasConcept C15744967 @default.
- W2949272442 hasConcept C204321447 @default.
- W2949272442 hasConcept C23123220 @default.
- W2949272442 hasConcept C2778738651 @default.
- W2949272442 hasConcept C41008148 @default.
- W2949272442 hasConcept C77805123 @default.
- W2949272442 hasConcept C81917197 @default.
- W2949272442 hasConceptScore W2949272442C154945302 @default.
- W2949272442 hasConceptScore W2949272442C155092808 @default.
- W2949272442 hasConceptScore W2949272442C15744967 @default.
- W2949272442 hasConceptScore W2949272442C204321447 @default.
- W2949272442 hasConceptScore W2949272442C23123220 @default.
- W2949272442 hasConceptScore W2949272442C2778738651 @default.
- W2949272442 hasConceptScore W2949272442C41008148 @default.
- W2949272442 hasConceptScore W2949272442C77805123 @default.
- W2949272442 hasConceptScore W2949272442C81917197 @default.
- W2949272442 hasLocation W29492724421 @default.
- W2949272442 hasLocation W29492724422 @default.
- W2949272442 hasOpenAccess W2949272442 @default.
- W2949272442 hasPrimaryLocation W29492724421 @default.
- W2949272442 hasRelatedWork W1511492033 @default.
- W2949272442 hasRelatedWork W1563636114 @default.
- W2949272442 hasRelatedWork W1599562392 @default.
- W2949272442 hasRelatedWork W2082579326 @default.
- W2949272442 hasRelatedWork W2162464778 @default.
- W2949272442 hasRelatedWork W2398010817 @default.
- W2949272442 hasRelatedWork W2918156780 @default.
- W2949272442 hasRelatedWork W3107474891 @default.
- W2949272442 hasRelatedWork W9662544 @default.
- W2949272442 hasRelatedWork W2519287959 @default.
- W2949272442 isParatext "false" @default.
- W2949272442 isRetracted "false" @default.
- W2949272442 magId "2949272442" @default.
- W2949272442 workType "article" @default.