0000000000306622

AUTHOR

Jesus G. Boticario

0000-0003-4949-9220

showing 4 related works from this author

An Intra-Subject Approach Based on the Application of HMM to Predict Concentration in Educational Contexts from Nonintrusive Physiological Signals in…

2021

Previous research has proven the strong influence of emotions on student engagement and motivation. Therefore, emotion recognition is becoming very relevant in educational scenarios, but there is no standard method for predicting students’ affects. However, physiological signals have been widely used in educational contexts. Some physiological signals have shown a high accuracy in detecting emotions because they reflect spontaneous affect-related information, which is fresh and does not require additional control or interpretation. Most proposed works use measuring equipment for which applicability in real-world scenarios is limited because of its high cost and intrusiveness. To tackle this…

IntrusivenessComputer scienceEmotionsControl (management)Student engagementContext (language use)02 engineering and technologyuser-centred systemsLearner modellinglcsh:Chemical technologyNonintrusiveMachine learningcomputer.software_genre01 natural sciencesBiochemistryArticleAnalytical ChemistryTask (project management)Heart RateUser-centred systems0202 electrical engineering electronic engineering information engineeringHumanslcsh:TP1-1185Electrical and Electronic EngineeringAffective computingHidden Markov modelaffective computingInstrumentationInformáticabusiness.industry010401 analytical chemistrynonintrusiveAffective computingComputer scienceAtomic and Molecular Physics and Opticsphysiological sensors0104 chemical scienceslearner modellingPhysiological sensors020201 artificial intelligence & image processingArtificial intelligenceState (computer science)Skin TemperaturebusinesscomputerSensors
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Some insights into the impact of affective information when delivering feedback to students

2018

The relation between affect-driven feedback and engagement on a given task has been largely investigated. This relation can be used to make personalised instructional decisions and/or modif...

Relation (database)05 social sciences050301 educationGeneral Social Sciences050105 experimental psychologyTask (project management)Human-Computer InteractionArts and Humanities (miscellaneous)Developmental and Educational Psychology0501 psychology and cognitive sciencesAffective computingPsychology0503 educationCognitive psychologyBehaviour & Information Technology
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Filtering of Spontaneous and Low Intensity Emotions in Educational Contexts

2015

Affect detection is a challenging problem, even more in educational contexts, where emotions are spontaneous and usually subtle. In this paper, we propose a two-stage detection approach based on an initial binary discretization followed by a specific emotion prediction stage. The binary classification method uses several distinct sources of information to detect and filter relevant time slots from an affective point of view. An accuracy close to 75% at detecting whether the learner has felt an educationally relevant emotion on 20 second time slots has been obtained. These slots can then be further analyzed by a second classifier, to determine the specific user emotion.

DiscretizationPoint (typography)Binary classificationComputer scienceSpeech recognitionClassifier (linguistics)Binary numberFilter (signal processing)Affective computingAffect (psychology)
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BIG-AFF

2017

Recent research has provided solid evidence that emotions strongly affect motivation and engagement, and hence play an important role in learning. In BIG-AFF project, we build on the hypothesis that ``it is possible to provide learners with a personalised support that enriches their learning process and experience by using low intrusive (and low cost) devices to capture affective multimodal data that include cognitive, behavioural and physiological information''. In order to deal with the affect management complete cycle, thus covering affect detection, modelling and feedback, there is lack of standards and consolidated methodologies. Being our goal to develop realistic affect-aware learnin…

Process (engineering)Computer scienceMultimodal data05 social sciences050301 educationCognition02 engineering and technologyAffect (psychology)Data scienceUser studiesWork (electrical)Human–computer interactionOrder (exchange)0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingAffective computing0503 educationAdjunct Publication of the 25th Conference on User Modeling, Adaptation and Personalization
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