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TypeShift: A User Interface for Visualizing the Typing Production Process

2021-03-07 00:59:31
Adam Goodkind

Abstract

TypeShift is a tool for visualizing linguistic patterns in the timing of typing production. Language production is a complex process which draws on linguistic, cognitive and motor skills. By visualizing holistic trends in the typing process, TypeShift aims to elucidate the often noisy information signals that are used to represent typing patterns, both at the word-level and character-level. It accomplishes this by enabling a researcher to compare and contrast specific linguistic phenomena, and compare an individual typing session to multiple group averages. Finally, although TypeShift was originally designed for typing data, it can easy be adapted to accommodate speech data, as well. A web demo is available at this https URL. The source code can be accessed at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2103.04222

PDF

https://arxiv.org/pdf/2103.04222.pdf


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