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False Identity Detection Using Complex Sentences

False Identity Detection Using Complex Sentences
False Identity Detection Using Complex Sentences

The use of faked identities is a current issue for both physical and online security. In this paper, we test the differences between subjects who report their true identity and the ones who give fake identity responding to control, simple, and complex questions. Asking complex questions is a new procedure for increasing liars' cognitive load, which is presented in this paper for the first time. The experiment consisted in an identity verification task, during which response time and errors were collected. Twenty participants were instructed to lie about their identity, whereas the other 20 were asked to respond truthfully. Different machine learning (ML) models were trained, reaching an accuracy level around 90-95% in distinguishing liars from truth tellers based on error rate and response time. Then, to evaluate the generalization and replicability of these models, a new sample of 10 participants were tested and classified, obtaining an accuracy between 80 and 90%. In short, results indicate that liars may be efficiently distinguished from truth tellers on the basis of their response times and errors to complex questions, with an adequate generalization accuracy of the classification models.

1664-1078
Monaro, Merylin
a2ed8b5e-fe61-4800-90b8-b214162c08ff
Gamberini, Luciano
c136975e-a409-4b57-8f8f-3bbd91870cb7
Zecchinato, Francesca
b9345a6c-e682-43b8-bb9d-832a21040303
Sartori, Giuseppe
cd1672f5-5deb-4dfd-9b89-ee09a2ca4fd8
Monaro, Merylin
a2ed8b5e-fe61-4800-90b8-b214162c08ff
Gamberini, Luciano
c136975e-a409-4b57-8f8f-3bbd91870cb7
Zecchinato, Francesca
b9345a6c-e682-43b8-bb9d-832a21040303
Sartori, Giuseppe
cd1672f5-5deb-4dfd-9b89-ee09a2ca4fd8

Monaro, Merylin, Gamberini, Luciano, Zecchinato, Francesca and Sartori, Giuseppe (2018) False Identity Detection Using Complex Sentences. Frontiers in Psychology, 9, [283]. (doi:10.3389/fpsyg.2018.00283).

Record type: Article

Abstract

The use of faked identities is a current issue for both physical and online security. In this paper, we test the differences between subjects who report their true identity and the ones who give fake identity responding to control, simple, and complex questions. Asking complex questions is a new procedure for increasing liars' cognitive load, which is presented in this paper for the first time. The experiment consisted in an identity verification task, during which response time and errors were collected. Twenty participants were instructed to lie about their identity, whereas the other 20 were asked to respond truthfully. Different machine learning (ML) models were trained, reaching an accuracy level around 90-95% in distinguishing liars from truth tellers based on error rate and response time. Then, to evaluate the generalization and replicability of these models, a new sample of 10 participants were tested and classified, obtaining an accuracy between 80 and 90%. In short, results indicate that liars may be efficiently distinguished from truth tellers on the basis of their response times and errors to complex questions, with an adequate generalization accuracy of the classification models.

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Published date: 6 March 2018

Identifiers

Local EPrints ID: 453647
URI: http://eprints.soton.ac.uk/id/eprint/453647
ISSN: 1664-1078
PURE UUID: 970da278-8c66-4459-ae6c-556f830e26e0
ORCID for Francesca Zecchinato: ORCID iD orcid.org/0000-0002-4639-8830

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Date deposited: 20 Jan 2022 17:42
Last modified: 17 Mar 2024 04:08

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Contributors

Author: Merylin Monaro
Author: Luciano Gamberini
Author: Francesca Zecchinato ORCID iD
Author: Giuseppe Sartori

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