The Red (Team) Analysis Weekly – 16 January 2014 – Rediscovering Politics?

Editorial – Rediscovering Politics? This week is particularly interesting, especially because of the emergence of new analyses, or rather of the rediscovery of fundamental political dynamics (and, of course, by political I do not mean politician) as fitting perfectly well current and future trends. First, religion on the one hand, science in its high-tech and geo-engineering …

2212 EVT – Scenario 2 – Panglossy: Same Old, Same Old

Last weeks’ summary: In 2012 EVT, Everstate (the ideal-type corresponding to our very real countries created to foresee the future of governance and of the modern nation-state) knows a rising dissatisfaction of its population. Everstate is plagued by a deepening budget deficit and an increasing need for liquidity, with a related creeping appropriation of resources while the strength of central public power weakens to the profit of various elite groups. An outdated world-view that promotes misunderstanding, disconnect and thus inadequate actions presides to its destiny. Henceforth, the political authorities are increasingly unable to deliver the security citizens seek. Risks to the legitimacy of the whole system increases. Alarmed by the rising difficulties and widespread discontent, the governing authorities decide to do something. Of the three potential scenarios or stories that …

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Revisiting influence analysis

Once variables (also called factors and drivers according to authors) have been identified – and in our case mapped, most foresight methodologies aim at reducing their number, i.e. keeping only a few of those variables.

Indeed, considering cognitive limitations, as well as finite resources, one tries obtaining a number of variables that can be easily and relatively quickly combined by the human brain.

The problem we here face methodologically is how to reduce this number of variables at best, making sure we do not reintroduce biases or/and simplify our model so much it becomes useless or suboptimal.

Furthermore, considering also the potential adverse reactions of practitioners to complex models, being able to present a properly simplified or reduced model (however remaining faithful to the initial one) is most often necessary.

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