Mental Workload and Language Production in Non-Native Speaker IPA Interaction
June 11, 2020 Β· Declared Dead Β· π CIU
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Authors
Yunhan Wu, Justin Edwards, Orla Cooney, Anna Bleakley, Philip R. Doyle, Leigh Clark, Daniel Rough, Benjamin R. Cowan
arXiv ID
2006.06331
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CL
Citations
30
Venue
CIU
Last Checked
4 months ago
Abstract
Through proliferation on smartphones and smart speakers, intelligent personal assistants (IPAs) have made speech a common interaction modality. Yet, due to linguistic coverage and varying levels of functionality, many speakers engage with IPAs using a non-native language. This may impact the mental workload and pattern of language production displayed by non-native speakers. We present a mixed-design experiment, wherein native (L1) and non-native (L2) English speakers completed tasks with IPAs through smartphones and smart speakers. We found significantly higher mental workload for L2 speakers during IPA interactions. Contrary to our hypotheses, we found no significant differences between L1 and L2 speakers in terms of number of turns, lexical complexity, diversity, or lexical adaptation when encountering errors. These findings are discussed in relation to language production and processing load increases for L2 speakers in IPA interaction.
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