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Published byNorman Glenn Modified over 9 years ago
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Personalizing the theme park: Psychometric profiling and physiological monitoring Stefan Rennick Egglestone University of Nottingham
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1. The theme park as a target for UMAP 2. Proof-of-concept profiling study in a theme park 3. Questions for future research Overview
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More than 100 million visits per year Little published research Few operators (but all large scale) Substantial investment in innovation Why the theme park?
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Challenges
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Challenge one: The theme park recommender system Challenge two: Personalised rides Challenges A common approach involves building a user profile!
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Information collected before the visit –Psychometric personality profiling Information collected during the visit –Physiological monitoring Research into profile design
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Personality profiling overview Sensation Seeking Scale 40 questions Thrill seeking:8/10 Experience seeking: 7/10 Disinhibition:8/10 Boredom susceptibility:7/10 Big 5 38 questions Openness to experience:9/10 Conscientiousness: 6/10 Extraversion:9/10 Agreeableness:5/10 Neuroticism:5/10 Questionnaire on entry or during on-line ticket purchase?
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Heart-rate Skin conductance Breathing rate Physiological monitoring Affective computing: Analysis of physiological data reveals emotional response
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What does physiological monitoring reveal about ride experience? Research questions Can personality profiles predict experiences on rides?
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1. Negotiate access to local theme park 2. Choose single ride 3. Recruit cohort of participants 4. Profile: Personality tests on entry to theme park 5. Profile: Heart-rate response recorded on single ride 6. Profile: Participant quantifies their experience on the ride 7. Analysis: Relationships between profile and experience Approach
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Oblivion @ Alton Towers
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Arousal: How much do you feel alert, with your body pumped up and buzzing, ready for action? (1,9) Valence: How positive or negative do you feel? (-4,+4) The circumplex model
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Self-report data ArousalValence During drop
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What does heart-rate reveal?
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Correlations between personality dimensions and self- reports at various places on the ride (r~0.3, all at p=0.001) –Thrill seeking –Extraversion –Openness to Experience Two different ways of using these dimensions to cluster participants into groups who report similar experience –Thrill seeking –Extraversion and Openness to Experience Results – personality profiling
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Potential use of heart-rate as a measure of whether visitors are excited or relaxed Evidence exists for the efficacy of personality profiling in predicting experience Conclusions profile design
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Extend analysis to multiple rides Consider other attractions in theme park How to make recommendations for groups? Different physiological measures Different psychometric measures Considering patterns of queuing? Further work – theme park
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When is personality modelling applicable in profiling? Trade-off between accuracy of model and time taken to fill out questionnaire High-value applications? –E.g internet dating Issues of multiple identity / personality Cross-cultural issues Personality profiling
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