Decision-Making in the Human-Machine Interface

If our choices make us who we are, then what does that mean when these choices are made in the human-machine interface? Developing a clear understanding of how human decision making is influenced by automated systems in the environment is critical because, as human-machine interfaces and assistive r...

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Main Authors: J. Benjamin Falandays, Samuel Spevack, Philip Pärnamets, Michael Spivey
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-02-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fpsyg.2021.624111/full
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spelling doaj-fd7fef6324224a78a04b41fce246470c2021-02-11T06:54:17ZengFrontiers Media S.A.Frontiers in Psychology1664-10782021-02-011210.3389/fpsyg.2021.624111624111Decision-Making in the Human-Machine InterfaceJ. Benjamin Falandays0Samuel Spevack1Philip Pärnamets2Philip Pärnamets3Michael Spivey4Department of Cognitive and Information Sciences, University of California, Merced, Merced, CA, United StatesScientist at Exponent, Menlo Park, CA, United StatesDepartment of Psychology, New York University, New York, NY, United StatesDivision of Psychology, Department of Clinical Neuroscience, Karolinska Institutet, Solna, SwedenDepartment of Cognitive and Information Sciences, University of California, Merced, Merced, CA, United StatesIf our choices make us who we are, then what does that mean when these choices are made in the human-machine interface? Developing a clear understanding of how human decision making is influenced by automated systems in the environment is critical because, as human-machine interfaces and assistive robotics become even more ubiquitous in everyday life, many daily decisions will be an emergent result of the interactions between the human and the machine – not stemming solely from the human. For example, choices can be influenced by the relative locations and motor costs of the response options, as well as by the timing of the response prompts. In drift diffusion model simulations of response-prompt timing manipulations, we find that it is only relatively equibiased choices that will be successfully influenced by this kind of perturbation. However, with drift diffusion model simulations of motor cost manipulations, we find that even relatively biased choices can still show some influence of the perturbation. We report the results of a two-alternative forced-choice experiment with a computer mouse modified to have a subtle velocity bias in a pre-determined direction for each trial, inducing an increased motor cost to move the cursor away from the pre-designated target direction. With queries that have each been normed in advance to be equibiased in people’s preferences, the participant will often begin their mouse movement before their cognitive choice has been finalized, and the directional bias in the mouse velocity exerts a small but significant influence on their final choice. With queries that are not equibiased, a similar influence is observed. By exploring the synergies that are developed between humans and machines and tracking their temporal dynamics, this work aims to provide insight into our evolving decisions.https://www.frontiersin.org/articles/10.3389/fpsyg.2021.624111/fullmouse trackingembodied cognitiondecision-makingeye trackingdrift diffusion
collection DOAJ
language English
format Article
sources DOAJ
author J. Benjamin Falandays
Samuel Spevack
Philip Pärnamets
Philip Pärnamets
Michael Spivey
spellingShingle J. Benjamin Falandays
Samuel Spevack
Philip Pärnamets
Philip Pärnamets
Michael Spivey
Decision-Making in the Human-Machine Interface
Frontiers in Psychology
mouse tracking
embodied cognition
decision-making
eye tracking
drift diffusion
author_facet J. Benjamin Falandays
Samuel Spevack
Philip Pärnamets
Philip Pärnamets
Michael Spivey
author_sort J. Benjamin Falandays
title Decision-Making in the Human-Machine Interface
title_short Decision-Making in the Human-Machine Interface
title_full Decision-Making in the Human-Machine Interface
title_fullStr Decision-Making in the Human-Machine Interface
title_full_unstemmed Decision-Making in the Human-Machine Interface
title_sort decision-making in the human-machine interface
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2021-02-01
description If our choices make us who we are, then what does that mean when these choices are made in the human-machine interface? Developing a clear understanding of how human decision making is influenced by automated systems in the environment is critical because, as human-machine interfaces and assistive robotics become even more ubiquitous in everyday life, many daily decisions will be an emergent result of the interactions between the human and the machine – not stemming solely from the human. For example, choices can be influenced by the relative locations and motor costs of the response options, as well as by the timing of the response prompts. In drift diffusion model simulations of response-prompt timing manipulations, we find that it is only relatively equibiased choices that will be successfully influenced by this kind of perturbation. However, with drift diffusion model simulations of motor cost manipulations, we find that even relatively biased choices can still show some influence of the perturbation. We report the results of a two-alternative forced-choice experiment with a computer mouse modified to have a subtle velocity bias in a pre-determined direction for each trial, inducing an increased motor cost to move the cursor away from the pre-designated target direction. With queries that have each been normed in advance to be equibiased in people’s preferences, the participant will often begin their mouse movement before their cognitive choice has been finalized, and the directional bias in the mouse velocity exerts a small but significant influence on their final choice. With queries that are not equibiased, a similar influence is observed. By exploring the synergies that are developed between humans and machines and tracking their temporal dynamics, this work aims to provide insight into our evolving decisions.
topic mouse tracking
embodied cognition
decision-making
eye tracking
drift diffusion
url https://www.frontiersin.org/articles/10.3389/fpsyg.2021.624111/full
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