
EDUCACIÓN EN LÍNEA, TECNOLOGÍA EDUCATIVA, APRENDIZAJE ASISTIDO CON INTELIGENCIA ARTIFICIAL
Instrucciones
A continuación se presenta una diversidad de recursos (websites, videos, artículos, entre otros) que pueden ser de su interés. La mayoría de estos recursos se encuentran disponibles de manera gratuita en línea en el hipervínculo proporcionado. Aquellos títulos que se encuentran en inglés tienen, entre paréntesis, la traducción del título al español. Si no sabe dónde empezar, los numerales de los recursos recomendados se encuentran marcados en otro color (ej., Ansari).
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Educación en línea (Cambiando el panorama de aprendizaje usando la tecnología)
- Allen, I. E., & Seaman, J. (2016). Online Report Card: Tracking online education in the United States. Babson Survey Research Group. Babson College, 231 Forest Street, Babson Park, MA 02457.
- Alqurashi, E. (2019). Predicting student satisfaction and perceived learning within online learning environments. Distance Education, 40(1), 133-148.
- Alshurideh, M. T., Salloum, S. A., Al Kurdi, B., Monem, A. A., & Shaalan, K. (2019). Understanding the quality determinants that influence the intention to use the mobile learning platforms: A practical study. International Journal of Interactive Mobile Technologies (IJIM), 13(11), 157-183.
- Bates, A. W. (2015). Teaching in a digital age. Missouri, MO: University of Missouri.
- Bedenlier, S., Bond, M., Buntins, K., Zawacki-Richter, O., & Kerres, M. (2020). Facilitating student engagement through educational technology in higher education: A systematic review in the field of arts and humanities. Australasian Journal of Educational Technology, 126-150.
- Bennett, S., Dawson, P., Bearman, M., Molloy, E., & Boud, D. (2017). How technology shapes assessment design: Findings from a study of university teachers. British Journal of Educational Technology, 48(2), 672-682.
- Bettinger, E., & Loeb, S. (2017). Promises and pitfalls of online education. Evidence Speaks Reports, 2(15), p1-4.
- Blau, G., Jarrell, S., Seeton, A., Young, T., Grace, K., & Hughes, M. (2018). Proposing an expanded measure for comparing online/hybrid to face-to-face courses. Journal of Education and Development, 2(2), 1.
- Bose, D., Pakala, K., & Grover, L. (2020). A mobile learning community in a living learning community: perceived impact on digital fluency and communication. The Online Journal of New Horizons in Education-January, 10(1).
- Celik, D., & Magoulas, G. D. (2019, September). Challenging the alignment of learning design tools with HE lecturers’ learning design practice. In European Conference on Technology Enhanced Learning (pp. 142-157). Springer, Cham.
- Cinquin, P. A., Guitton, P., & Sauzeon, H. (2019). Online e-learning and cognitive disabilities: A systematic review. Computers & Education, 130, 152-167.
- Collins, A., & Halverson, R. (2018). Rethinking education in the age of technology: The digital revolution and schooling in America. New York, NY: Teachers College Press.
- Crisp, G., Guàrdia, L., & Hillier, M. (2016). Using e-Assessment to enhance student learning and evidence learning outcomes. International Journal of Educational Technology in Higher Education, 18.
- Diep, A. N., Zhu, C., Struyven, K., & Blieck, Y. (2017). Who or what contributes to student satisfaction in different blended learning modalities?. British Journal of Educational Technology, 48(2), 473-489.
- Drew, C. (2019). Re-examining cognitive tools: New developments, new perspectives, and new opportunities for educational technology research. Australasian Journal of Educational Technology, 35(2).
- Ducasse, A. M., & Hill, K. (2019). Developing student feedback literacy using educational technology and the reflective feedback conversation. Practitioner Research in Higher Education, 12(1), 24-37.
- Ed on EdTech. (2019). Latest news in education and tech. [website, blog, videos]. https://www.youtube.com/channel/UC4FY5hGOl7pBRqJ_TWDvhVA
- EdTech. (2019). EdTech 50 2019. [webpage]. https://edtechnology.co.uk/Article/edtech-50-schools-2019/
- El-Henawy, W. M. (2019). Using brain-based instruction to optimize early childhood English language education. In Early childhood development: Concepts, methodologies, tools, and applications (pp. 460-483). Hershey, PA: IGI Global.
- Ellis, R. A., & Bliuc, A. M. (2019). Exploring new elements of the student approaches to learning framework: The role of online learning technologies in student learning. Active Learning in Higher Education, 20(1), 11-24.
- Engeness, I., & Edwards, A. (2017). The complexity of learning: Exploring the interplay of different mediational means in group learning with digital tools. Scandinavian Journal of Educational Research, 61(6), 650-667.
- FitzGerald, E., Kucirkova, N., Jones, A., Cross, S., Ferguson, R., Herodotou, C., … & Scanlon, E. (2018). Dimensions of personalisation in technology‐enhanced learning: A framework and implications for design. British Journal of Educational Technology, 49(1), 165-181.
- Fitzgerald, M. S., DellaVecchia, G. P., Palincsar, A. P., & Soloway, E. (2018). Third graders’ use of digital tools designed for multimodal communication in project-based science. International Society of the Learning Sciences, Inc.[ISLS]..
- Freeze, R. D., Alshare, K. A., Lane, P. L., & Wen, H. J. (2019). IS success model in e-learning context based on students’ perceptions. Journal of Information systems education, 21(2), 4.
- Guerrero, L. Á., García, D. M. A., Pérez, M. A. C., Lira, S. E. T., & de Jesús López Ornelas, E. (2019, September). Learn&safe: digital security to reduce digital gap in educational community. In Proceedings of the IX Latin American Conference on Human Computer Interaction (pp. 1-6).
- Haskell, C. (2014). Blowing up the gradebook. [ video ] (17:44 minutes). Blowing up the gradebook – using video games for learning: Chris Haskell at TEDxAmmon
- Henriksen, D., Mishra, P., & Fisser, P. (2016). Infusing creativity and technology in 21st century education: A systemic view for change. Educational Technology & Society, 19(3), 27-37.
- Howard-Jones, P., Ott, M., van Leeuwen, T., & De Smedt, B. (2015). The potential relevance of cognitive neuroscience for the development and use of technology-enhanced learning. Learning, Media and Technology, 40(2), 131-151.
- Huo, Y. (2019). A pedagogy-based framework for optimizing learning efficiency across multiple disciplines in educational games. International Journal of Information and Education Technology, 9(10).
- Jabr, F. (2013). The reading brain in the digital age: The science of paper versus screens. Scientific American, 11(04), 2013.
- Jack, C., & Higgins, S. (2019). Embedding educational technologies in early years education. Research in Learning Technology.
- Kahn, P., Everington, L., Kelm, K., Reid, I., & Watkins, F. (2017). Understanding student engagement in online learning environments: The role of reflexivity. Educational Technology Research and Development, 65(1), 203-218.
- Kaimara, P., Poulimenou, S. M., Oikonomou, A., Deliyannis, I., & Plerou, A. (2019). Smartphones at schools? Yes, why not?. European Journal of Engineering Research and Science, 1-6.
- Kennedy, M., & Dunn, T. J. (2018). Improving the use of technology enhanced learning environments in higher education in the UK: A qualitative visualization of students’ views. Contemporary Educational Technology, 9(1), 76-89.
- Kynigos, C., & Kolovou, A. (2018). Teachers as designers of digital educational resources for creative mathematical thinking. In Research on Mathematics Textbooks and Teachers’ Resources (pp. 145-164). Springer, Cham.
- Lamb, R. L., Annetta, L., Firestone, J., & Etopio, E. (2018). A meta-analysis with examination of moderators of student cognition, affect, and learning outcomes while using serious educational games, serious games, and simulations. Computers in Human Behavior, 80, 158-167.
- Larmuseau, C., Desmet, P., & Depaepe, F. (2019). Perceptions of instructional quality: impact on acceptance and use of an online learning environment. Interactive Learning Environments, 27(7), 953-964.
- Law, K. M., Geng, S., & Li, T. (2019). Student enrollment, motivation and learning performance in a blended learning environment: The mediating effects of social, teaching, and cognitive presence. Computers & Education, 136, 1-12.
- Lin, M. H., Chen, H. C., & Liu, K. S. (2017). A study of the effects of digital learning on learning motivation and learning outcome. Eurasia Journal of Mathematics, Science and Technology Education, 13(7), 3553-3564.
- Lodge, J. M., & Horvath, J. C. (2016). Science of learning and digital learning environments. In J.C. Horvath, .M. Lodge and J. Hattie’s From the laboratory to the classroom: Translating science of learning for teachers.
- Lodge, J. M., Kennedy, G., & Lockyer, L. (2016). Brain, mind and educational technology. Australasian Journal of Educational Technology, 32(6).
- Ludvigsen, S., & Steier, R. (2019). Reflections and looking ahead for CSCL: digital infrastructures, digital tools, and collaborative learning. International Journal of Computer-Supported Collaborative Learning, 14(4), 415-423.
- Macgilchrist, F. (2019). Cruel optimism in edtech: when the digital data practices of educational technology providers inadvertently hinder educational equity. Learning, Media and Technology, 44(1), 77-86.
- Mao, J., Ifenthaler, D., Fujimoto, T., Garavaglia, A., & Rossi, P. G. (2019). National policies and educational technology: a synopsis of trends and perspectives from five countries. TechTrends, 63(3), 284-293.
- Martin, F., Ritzhaupt, A., Kumar, S., & Budhrani, K. (2019). Award-winning faculty online teaching practices: Course design, assessment and evaluation, and facilitation. The Internet and Higher Education, 42, 34-43.
- Mirriahi, N., Liaqat, D., Dawson, S., & Gašević, D. (2016). Uncovering student learning profiles with a video annotation tool: reflective learning with and without instructional norms. Educational Technology Research and Development, 64(6), 1083-1106.
- Muir, T., Milthorpe, N., Stone, C., Dyment, J., Freeman, E., & Hopwood, B. (2019). Chronicling engagement: students’ experience of online learning over time. Distance Education, 40(2), 262-277.
- Muljana, P. S., & Luo, T. (2019). Factors contributing to student retention in online learning and recommended strategies for improvement: A systematic literature review. Journal of Information Technology Education: Research, 18.
- O’Brien, J. (2017). Back to the future of edtech: A meditation. EDUCAUSE. [blog] https://www.educause.edu/interactive/2017/4/back-to-the-future-of-edtech/
- Otterborn, A., Schönborn, K., & Hultén, M. (2019). Surveying preschool teachers’ use of digital tablets: general and technology education related findings. International journal of technology and design education, 29(4), 717-737.
- Ozernov‐Palchik, O., Norton, E. S., Sideridis, G., Beach, S. D., Wolf, M., Gabrieli, J. D., & Gaab, N. (2017). Longitudinal stability of pre‐reading skill profiles of kindergarten children: implications for early screening and theories of reading. Developmental science, 20(5), e12471.
- Pacheco, B. (2018). The rise of the human digital brain: How multidirectional thinking is changing the way we learn. IAP.
- Pardo, A., Jovanovic, J., Dawson, S., Gašević, D., & Mirriahi, N. (2019). Using learning analytics to scale the provision of personalised feedback. British Journal of Educational Technology, 50(1), 128-138.
- Parsons, D., Inkila, M., & Lynch, J. (2019). Navigating learning worlds: Using digital tools to learn in physical and virtual spaces. Australasian Journal of Educational Technology, 35(4).
- Parsons, S. A., Hutchison, A. C., Hall, L. A., Parsons, A. W., Ives, S. T., & Leggett, A. B. (2019). US teachers’ perceptions of online professional development. Teaching and Teacher Education: An International Journal of Research and Studies, 82(1), 33-42.
- Parsons, T. D., Lin, L., & Cockerham, D. (Eds.). (2018). Mind, brain and technology: Learning in the age of emerging technologies. Springer.
- Pechenkina, E., & Aeschliman, C. (2017). What do students want? Making sense of student preferences in technology-enhanced learning. Contemporary Educational Technology, 8(1), 26-39.
- Sandanayake, T. C. (2019). Promoting open educational resources-based blended learning. International Journal of Educational Technology in Higher Education, 16(1), 3.
- Soffer, T., & Nachmias, R. (2018). Effectiveness of learning in online academic courses compared with face‐to‐face courses in higher education. Journal of Computer Assisted Learning, 34(5), 534-543.
- Study.com (n.d.) Educational technology trends: What teachers should know. Available on https://study.com/academy/lesson/educational-technology-trends-what-teachers-should-know.html
- Surabhi, S. (2019). 3 ways machine learning in EdTech is changing the educational industry. Net Solutions. [webpage] https://www.netsolutions.com/insights/machine-learning-in-edtech/
- Technology for Every Student? (2:43 minutes) Interview with researcher Todd Rose about digital technology and Universal Design at the Center for Applied Special Technology (CAST).
- Uncapher, M. R. (2018). Design considerations for conducting large‐scale learning research using innovative technologies in schools. Mind, Brain, and Education. https://doi.org/10.1111/mbe.12185
- Universal Design for Learning (UDL) UDL is a set of principles for curriculum development that give all individuals equal opportunities to learn. UDL provides a blueprint for creating instructional goals, methods, materials, and assessments that work for everyone–not a single, one-size-fits-all solution but rather flexible approaches that can be customized and adjusted for individual needs.
- Wilkerson, M. H. (2017). Teachers, students, and after-school professionals as designers of digital tools for learning. In Participatory Design for Learning (pp. 125-138). Routledge.
- Williamson, B., Pykett, J., & Nemorin, S. (2018). Biosocial spaces and neurocomputational governance: brain-based and brain-targeted technologies in education. Discourse: Studies in the Cultural Politics of Education, 39(2), 258-275. [Request access from HOLLIS]
- Witton, G. (2017). The value of capture: Taking an alternative approach to using lecture capture technologies for increased impact on student learning and engagement. British Journal of Educational Technology, 48(4), 1010-1019.
- Xu, H., Liu, S., & Liu, M. (2019). Analysis of the application of modern educational technology in middle school mathematics teaching. International Journal of Innovation and Research in Educational Sciences, 6(3), 2349-5219.
- Yen, S. C., Lo, Y., Lee, A., & Enriquez, J. (2018). Learning online, offline, and in-between: comparing student academic outcomes and course satisfaction in face-to-face, online, and blended teaching modalities. Education and Information Technologies, 23(5), 2141-2153.
- Zhao, Y., Frey, B., Rice, S., Rury, J. L., & Isaacson, R. (2019). Investigating the Relationship between faculty perception of educational technology and the level of technology integration into teaching and learning (Doctoral dissertation, University of Kansas).
Diseño instruccional (Creación de ambientes de aprendizaje)
- Al Mamun, M. A., Lawrie, G., & Wright, T. (2020). Instructional design of scaffolded online learning modules for self-directed and inquiry-based learning environments. Computers & Education, 144, 103695.
- Alomyan, H., & Green, D. (2019, August). Learning theories: Implications for online learning design. In Proceedings of the 2019 3rd International Conference on E-Society, E-Education and E-Technology (pp. 126-130).
- Baldwin, S. J., & Ching, Y. H. (2019). An online course design checklist: development and users’ perceptions. Journal of Computing in Higher Education, 31(1), 156-172.
- Holland, A. A. (2019). Effective principles of informal online learning design: A theory-building metasynthesis of qualitative research. Computers & Education, 128, 214-226.
- Ou, C., Joyner, D. A., & Goel, A. K. (2019). Designing and developing video lessons for online learning: A seven-principle model. Online Learning, 23(2), 82-104.
- Powell, C. G., & Bodur, Y. (2019). Teachers’ perceptions of an online professional development experience: Implications for a design and implementation framework. Teaching and Teacher Education, 77, 19-30.
- Suartama, I. K., Setyosari, P., Sulthoni, S., & Ulfa, S. (2019). Development of an instructional design model for mobile blended learning in higher education. International Journal of Emerging Technologies in Learning (iJET), 14(16), 4-22.
- Educational Technology (Creation of stand-alone and complementary tools in formal and informal learning)
- Angeli, C., Howard, S. K., Ma, J., Yang, J., & Kirschner, P. A. (2017). Data mining in educational technology classroom research: Can it make a contribution?. Computers & Education, 113, 226-242.
- Bartolomé, A., Castañeda, L., & Adell, J. (2018). Personalisation in educational technology: the absence of underlying pedagogies. International Journal of Educational Technology in Higher Education, 15(1), 14. [Request access from HOLLIS]
- Bateman, B. L. (2019). Internet resources: Educational technology: A guide to resources on the Web. College & Research Libraries News, 64(1), 9-13.
- Bond, M., Buntins, K., Bedenlier, S., Zawacki-Richter, O., & Kerres, M. (2020). Mapping research in student engagement and educational technology in higher education: a systematic evidence map. International Journal of Educational Technology in Higher Education, 17(1), 2.
- Bond, M., Zawacki‐Richter, O., & Nichols, M. (2019). Revisiting five decades of educational technology research: A content and authorship analysis of the British Journal of Educational Technology. British Journal of Educational Technology, 50(1), 12-63.
- Brookings Institution. (2013). Education technology: The next generation. [ video ] (1:23:44 minutes). Available on Full Event – Education Technology: The Next Generation
- Department of Education, U.S. (2014). Devices. Office of Educational Technology. [ video ] (2:34 minutes). Available on: Department of Education: Devices
- Freina, L., & Ott, M. (2015, January). A literature review on immersive virtual reality in education: state of the art and perspectives. In The International Scientific Conference eLearning and Software for Education (Vol. 1, p. 133). Carol I National Defense University.
- Gottschalk, F. (2019). Impacts of technology use on children: Exploring literature on the brain, cognition and well-being. Paris: OECD.
- Hew, K. F., Lan, M., Tang, Y., Jia, C., & Lo, C. K. (2019). Where is the “theory” within the field of educational technology research?. British Journal of Educational Technology, 50(3), 956-971.
- Hollands, F., & Escueta, M. (2019). How research informs educational technology decision-making in higher education: the role of external research versus internal research. Educational Technology Research and Development, 1-18.
- Howard, M. C., & Gutworth, M. B. (2020). A meta-analysis of virtual reality training programs for social skill development. Computers & Education, 144, 103707.
- Huang, R., Spector, J. M., & Yang, J. (2019). Educational Technology: A primer for the 21st centuary. Springer.
- Ifenthaler, D., & Tracey, M. W. (2016). Exploring the relationship of ethics and privacy in learning analytics and design: implications for the field of educational technology. Educational Technology Research and Development, 64(5), 877-880.
- Jacobs, K., Leopold, A., Hendricks, D. J., Sampson, E., Nardone, A., Lopez, K. B., … & Dembe, J. (2017). Project career: Perceived benefits of iPad apps among college students with Traumatic Brain Injury (TBI). Work, 58(1), 45-50.
- Johnson, P., Anderson, A., & Cammidge, T. (2019). EdTech+ EdTeach: Exploring the Integration of Educational Technology Through Teacher Education. Edited by: Wafa Zoghbor, Suhair Al Alami, & Thomaï Alexiou, 71.
- Kickmeier-Rust, M. D., Göbel, S., & Albert, D. (2008, September). 80Days: Melding adaptive educational technology and adaptive and interactive storytelling in digital educational games. In Proceedings of the First International Workshop on Story-Telling and Educational Games (STEG’08).
- Lampert, B., Pongracz, A., Sipos, J., Vehrer, A., & Horvath, I. (2018). MaxWhere VR-learning improves effectiveness over clasiccal tools of e-learning. Acta Polytechnica Hungarica, 15(3), 125-147.
- Liou, H. H., Yang, S. J., Chen, S. Y., & Tarng, W. (2017). The influences of the 2D image-based augmented reality and virtual reality on student learning. Journal of Educational Technology & Society, 20(3), 110-121.
- London School of Economics. (2016). Edtech: The student view on educational technology. [ video ] (2:19 minutes). Available on: Edtech – The student view on educational technology
- Maastricht University. (2018). Trend in educational technology. [webpage and videos]. https://library.maastrichtuniversity.nl/trends-in-educational-technology/
- Olmos-Raya, E., Ferreira-Cavalcanti, J., Contero, M., Castellanos-Baena, M. C., Chicci-Giglioli, I. A., & Alcañiz, M. (2018). Mobile virtual reality as an educational platform: A pilot study on the impact of immersion and positive emotion induction in the learning process. In Eurasia Journal of Mathematics Science and Technology Education (Vol. 14, No. 6, pp. 2045-2057). Eurasia Publishing House.
- Olmos, E., Cavalcanti, J. F., Soler, J. L., Contero, M., & Alcañiz, M. (2018). Mobile virtual reality: A promising technology to change the way we learn and teach. In Mobile and ubiquitous learning (pp. 95-106). Springer, Singapore. [Request access from HOLLIS]
- Rankin, J. (2018). Teaching with educational technology. MIT OpenCourseWare. [ video ] (1:07:10 minutes). Available on: 8. Teaching with Educational Technology
- Riva, G., Wiederhold, B. K., & Mantovani, F. (2019). Neuroscience of virtual reality: From virtual exposure to embodied medicine. Cyberpsychology, Behavior, and Social Networking, 22(1), 82-96.
- Roberts-Mahoney, H., Means, A. J., & Garrison, M. J. (2016). Netflixing human capital development: Personalized learning technology and the corporatization of K-12 education. Journal of Education Policy, 31(4), 405-420.
- Sahin, N. T., Abdus-Sabur, R., Keshav, N. U., Liu, R., Salisbury, J. P., & Vahabzadeh, A. (2018). Augmented Reality intervention for social communication in autism in a school classroom: Rated by teachers and parents as effective and usable in a controlled, longitudinal pilot study. https://doi.org/10.31234/osf.io/h2eu8
- Sousa, M. J., Cruz, R., & Martins, J. M. (2017). Digital learning methodologies and tools–a literature review. Edulearn17 Proceedings, 5185-5192.
- Spector, J. M., Ifenthaler, D., Sampson, D., Yang, J. L., Mukama, E., Warusavitarana, A., … & Bridges, S. (2016). Technology enhanced formative assessment for 21st century learning. Journal of Educational Technology & Society, 19(3), 58-71.
- Spencer, K. (2017). The psychology of educational technology and instructional media. Routledge.
Gaming (Use of human thinking algorithms to reinforce learning)
- Alstad, Z., Dahlstrom-Hakki, I., Asbell-Clarke, J., Rowe, E., & Altman, M. (2016). The use of multidimensional biopsychological markers to detect learning in educational gaming environments. Working Paper.
- Bavelier, D. (2012). Your brain on video games. Ted Talk. [ video ] (17:15 minutes). Available on: https://www.ted.com/talks/daphne_bavelier_your_brain_on_video_games?language=en
- Bediou, B., Adams, D. M., Mayer, R. E., Tipton, E., Green, C. S., & Bavelier, D. (2018). Meta-analysis of action video game impact on perceptual, attentional, and cognitive skills. Psychological Bulletin, 144(1), 77.
- Burgers, C., Eden, A., van Engelenburg, M. D., & Buningh, S. (2015). How feedback boosts motivation and play in a brain-training game. Computers in Human Behavior, 48, 94-103.
- Chalki, P., Tsiara, A., & Mikropoulos, T. A. (2019). An educational neuroscience approach in the design of digital educational games. Themes in eLearning, 12, 17-34.
- Charland, P., Allaire-Duquette, G., & Léger, P. M. (2018). Collecting neurophysiological data to investigate users’ cognitive states during game play. GSTF Journal on Computing (JoC), 2(3).
- Churchill Club. (2012). Technology in education: How will it change the game? [ video ] (1:30:05 minutes). Available on: 5.7.12 Technology in education: How will it change the game?
- Cohen, A. M. (2011). The gamification of education. The Futurist, 45(5), 16.
- Cowley, B., Fantato, M., Jennett, C., Ruskov, M., & Ravaja, N. (2014). Learning when serious: Psychophysiological evaluation of a technology-enhanced learning game. Educational Technology & Society, 17(1), 3-16.
- Deterding, S. (2012). Gamification: designing for motivation. Interactions, 19(4), 14-17.
- Deterding, S., Sicart, M., Nacke, L., O’Hara, K., & Dixon, D. (2011, May). Gamification. using game-design elements in non-gaming contexts. In CHI’11 Extended Abstracts on Human Factors in Computing Systems (pp. 2425-2428). ACM.
- Devonshire, I. M., Davis, J., Fairweather, S., Highfield, L., Thaker, C., Walsh, A., … & Hathway, G. J. (2014). Risk-based learning games improve long-term retention of information among school pupils. PloS One, 9(7), e103640.
- Domínguez, A., Saenz-De-Navarrete, J., De-Marcos, L., FernáNdez-Sanz, L., PagéS, C., & MartíNez-HerráIz, J. J. (2013). Gamifying learning experiences: Practical implications and outcomes. Computers & Education, 63, 380-392.
- Dondlinger, M. J. (2007). Educational video game design: A review of the literature. Journal of Applied Educational Technology, 4(1), 21-31.
- Erhel, S., & Jamet, E. (2019). Improving instructions in educational computer games: Exploring the relations between goal specificity, flow experience and learning outcomes. Computers in Human Behavior, 91, 106-114.
- Gentry, S. V., Gauthier, A., Ehrstrom, B. L. E., Wortley, D., Lilienthal, A., Car, L. T., … & Car, J. (2019). Serious gaming and gamification education in health professions: systematic review. Journal of medical Internet research, 21(3), e12994.
- Hamari, J., Shernoff, D. J., Rowe, E., Coller, B., Asbell-Clarke, J., & Edwards, T. (2016). Challenging games help students learn: An empirical study on engagement, flow and immersion in game-based learning. Computers in human behavior, 54, 170-179.
- Hebert, S. (2018). The power of gamification education. [ video ] (18:48 minutes). TedTalk. Available on: The Power of Gamification in Education | Scott Hebert | TEDxUAlberta
- Howard-Jones, P. (2013). Minds, brains and learning games at #LEGup. [ video ] (34:57 minutes). Available on: Dr Paul Howard-Jones on Minds, Brains and Learning Games at #LEGup
- Howard-Jones, P. (2013). Plenary 3-Minds, brains and learning games.
- Howard-Jones, P. A., Jay, T., Mason, A., & Jones, H. (2015). Gamification of learning deactivates the Default Mode Network Frontiers in Psychology, 6.
- Kapp, K. M. (2012). The gamification of learning and instruction: game-based methods and strategies for training and education. Hoboken, NJ: John Wiley & Sons.
- Kasemsap, K. (2016). Mastering educational computer games, educational video games, and serious games in the digital age. Gamification-Based E-Learning Strategies for Computer Programming Education, 30.
- Kim, J. T., & Lee, W. H. (2015). Dynamical model for gamification of learning (DMGL). Multimedia Tools and Applications, 74(19), 8483-8493. [Request access from HOLLIS]
- Koivisto, J., & Hamari, J. (2019). The rise of motivational information systems: A review of gamification research. International Journal of Information Management, 45, 191-210
- Landers, R. N. (2014). Developing a theory of gamified learning linking serious games and gamification of learning. Simulation & Gaming, 45(6), 752-768.
- Nelson, N. J., Fien, H., Doabler, C. T., & Clarke, B. (2016). Considerations for realizing the promise of educational gaming technology. Teaching Exceptional Children, 48(6), 293-300.
- Ozcelik, E., Cagiltay, N. E., & Ozcelik, N. S. (2013). The effect of uncertainty on learning in game-like environments. Computers & Education, 67, 12-20.
- Pozzi, F., Asensio-Perez, J. I., Ceregini, A., Dagnino, F. M., Dimitriadis, Y., & Earp, J. (2020). Supporting and representing learning design with digital tools: in between guidance and flexibility. Technology, Pedagogy and Education, 1-20.
- Pynn, I. L. (2017). School has a bad storyline: Gamification in educational environments. Electronic Theses and Dissertations. 5652. University of Central Florida.
- Ronimus, M., Kujala, J., Tolvanen, A., & Lyytinen, H. (2014). Children’s engagement during digital game-based learning of reading: The effects of time, rewards, and challenge. Computers & Education, 71, 237-246.
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*Esta mini-biblioteca fue originalmente compilada por el equipo docente del curso "Cómo aprende el cerebro: Aplicaciones prácticas para el aula” de Conexiones (septiembre a noviembre 2019).
Fecha de última actualización: Noviembre-2019

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