This contribution places itself within the emergency context of the COVID-19 spread. Until medical research identifies a cure acting at an organic level, it is necessary to manage in a scientific and methodologically well-founded way what the emergency generates among the members of the Community in interactive terms. This is in order to promote, among the members of the Community, the pursuit of the common aim of reducing the spread of infection, with a view to the Community Health as a whole. In addition, being at the level o interactions enables us to move towards a change of these interactions in response to the COVID-19 emergency, in order to manage what will happen in the future, in terms of changes in the interactive arrangements after the emergency itself. This becomes possible by shifting away from the use of deterministic-causal references to the use of the uncertainty of interaction as an epistemological foundation principle. Managing the interactive (and non-organic) fallout of the emergency in the Community is made possible by the formalization of the interactive modalities (the Discursive Repertories) offered by Dialogical Science. To place oneself within this scientific panorama allows to have interaction measurements: so, the interaction measurement indexes allow to offer the quantum of generative possibilities of realities built by the speeches of the Community members. Moreover, the Social Cohesion measurement index, in the area of Dialogical Science, makes available to public policies the shared measure of how, much and how the Community is moving towards the common purpose of reducing the contagion spread, rather than moving towards personal and not shared goals other than this one (for instance, having a walk in spite of the lockdown). In this index, the interaction between the Discursive Repertories and the "cohesion weight" associated with them offers a Cohesion output: the data allow to manage operationally what happens in the Community in a shared way and in anticipation, without leaving the interactions between its members to chance. In this way, they can be directed towards the common purpose through appropriate interventions relevant to the interactive set-up described in the data. The Cohesion measure makes it possible to operate effectively and efficiently, thanks to the possibility of monitoring the progress of the interventions implemented and evaluating their effectiveness. In addition, the use of predictive Machine Learning models, applied to interactive cohesion data, allows for immediate and efficient availability of the measure itself, optimizing time and resources.

The Interactive Management of the SARS-CoV-2 Virus: The Social Cohesion Index, a Methodological-Operational Proposal

Gian Piero Turchi
Project Administration
;
Marta Silvia Dalla Riva
Membro del Collaboration Group
;
Caterina Ciloni
Membro del Collaboration Group
;
Christian Moro
Membro del Collaboration Group
;
2021

Abstract

This contribution places itself within the emergency context of the COVID-19 spread. Until medical research identifies a cure acting at an organic level, it is necessary to manage in a scientific and methodologically well-founded way what the emergency generates among the members of the Community in interactive terms. This is in order to promote, among the members of the Community, the pursuit of the common aim of reducing the spread of infection, with a view to the Community Health as a whole. In addition, being at the level o interactions enables us to move towards a change of these interactions in response to the COVID-19 emergency, in order to manage what will happen in the future, in terms of changes in the interactive arrangements after the emergency itself. This becomes possible by shifting away from the use of deterministic-causal references to the use of the uncertainty of interaction as an epistemological foundation principle. Managing the interactive (and non-organic) fallout of the emergency in the Community is made possible by the formalization of the interactive modalities (the Discursive Repertories) offered by Dialogical Science. To place oneself within this scientific panorama allows to have interaction measurements: so, the interaction measurement indexes allow to offer the quantum of generative possibilities of realities built by the speeches of the Community members. Moreover, the Social Cohesion measurement index, in the area of Dialogical Science, makes available to public policies the shared measure of how, much and how the Community is moving towards the common purpose of reducing the contagion spread, rather than moving towards personal and not shared goals other than this one (for instance, having a walk in spite of the lockdown). In this index, the interaction between the Discursive Repertories and the "cohesion weight" associated with them offers a Cohesion output: the data allow to manage operationally what happens in the Community in a shared way and in anticipation, without leaving the interactions between its members to chance. In this way, they can be directed towards the common purpose through appropriate interventions relevant to the interactive set-up described in the data. The Cohesion measure makes it possible to operate effectively and efficiently, thanks to the possibility of monitoring the progress of the interventions implemented and evaluating their effectiveness. In addition, the use of predictive Machine Learning models, applied to interactive cohesion data, allows for immediate and efficient availability of the measure itself, optimizing time and resources.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3394419
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