2020
DOI: 10.1073/pnas.1917687117
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Adaptive social networks promote the wisdom of crowds

Abstract: Social networks continuously change as new ties are created and existing ones fade. It is widely acknowledged that our social embedding has a substantial impact on what information we receive and how we form beliefs and make decisions. However, most empirical studies on the role of social networks in collective intelligence have overlooked the dynamic nature of social networks and its role in fostering adaptive collective intelligence. Therefore, little is known about how groups of individuals dynamica… Show more

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Cited by 145 publications
(112 citation statements)
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References 61 publications
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“…We wish to note that other types of graphs can also be applied to simulate agents' social networking. Some studies show that disease diffusion processes can be affected by agents' social networks ( Almaatouq et al, 2020 ; Block et al, 2020 ; Cauchemez et al, 2011 ; Salje et al, 2016 ). For future work, we plan to apply other types of networks (e.g., small world network) to simulate agents' social interaction and physical contact, and assess the joint impacts of social contact network, individual behaviors and social media in the spread of infectious diseases.…”
Section: Discussion and Future Directionsmentioning
confidence: 99%
“…We wish to note that other types of graphs can also be applied to simulate agents' social networking. Some studies show that disease diffusion processes can be affected by agents' social networks ( Almaatouq et al, 2020 ; Block et al, 2020 ; Cauchemez et al, 2011 ; Salje et al, 2016 ). For future work, we plan to apply other types of networks (e.g., small world network) to simulate agents' social interaction and physical contact, and assess the joint impacts of social contact network, individual behaviors and social media in the spread of infectious diseases.…”
Section: Discussion and Future Directionsmentioning
confidence: 99%
“…Augmenting PVE with deliberative elements will allow participating citizens to learn from each other, to form reasoned opinions and to evaluate positions, thereby ironing out critiques of the individual approach to preference formation. It is important to investigate the extent to which the beneficial aspects of social interaction outweigh potential downsides such as social bias, herding and groupthink to ensure that social interaction leads to the ‘wisdom of the crowd’ instead of the ‘madness of the mob’ 95 . For the same reason, we believe that PVE is merely one of several ways to involve citizens in crisis policymaking, and might complement other public participation methods.…”
Section: Conclusion and Discussionmentioning
confidence: 99%
“…Empirica has an active and growing community of contributors, including professional developers, methodfocused researchers, question-driven social scientists, and outcome-oriented professionals. Although Empirica is under steady development, it has already been used to build (at least) 31 experiments by more than 18 different research teams across 12 different institutions, generating at least 12 manuscripts between 2019 and 2020 (Feng, Carstensdottir, El-Nasr, & Marsella, 2019;Pescetelli, Rutherford, Kao, & Rahwan, 2019;Becker, Porter, & Centola, 2019;Becker, Guilbeault, & Smith, 2019;Almaatouq, Noriega-Campero, et al, 2020;Houhton 2020a, b;Becker, Almaatouq, & Horvat, 2020;Almaatouq, Yin, & Watts, 2020;Noriega et al 2020;Feng 2020;Guilbeault, Woolley, & Becker, 2020;Jahani et al 2020).…”
Section: Empiricamentioning
confidence: 99%
“…For example, the platform explicitly separates experiment design and administration from implementation, promoting the development of reliable, replicable, and extendable research by enabling "experimentation-as-code." This modular structure encourages strategies such as multifactor (Almaatouq, Noriega-Campero, et al, 2020), adaptive (Letham, Karrer, Ottoni, & Bakshy, 2019;Balietti et al, 2020b;Paolacci et al, 2010;Balandat et al, 2020), and multiphase experimentation designs (Mao, Dworkin, Suri, & Watts, 2017;Almaatouq, Yin, & Watts, 2020), which dramatically expand the range of experimental conditions that can be studied. Additionally, the platform provides built-in data synchronization, concurrency control, and reactivity to natively support multi-participant experiments and support the investigation of macro-scale research questions.…”
mentioning
confidence: 99%