We introduce Forecasting Argumentation Frameworks (FAFs), a novel argumentation-based methodology for forecasting informed by recent judgmental forecasting research. FAFs comprise update frameworks which empower (human or artificial) agents to argue over time about the probability of outcomes, e.g. the winner of a political election or a fluctuation in inflation rates, whilst flagging perceived irrationality in the agents' behaviour with a view to improving their forecasting accuracy. FAFs include five argument types, amounting to standard pro/con arguments, as in bipolar argumentation, as well as novel proposal arguments and increase/decrease amendment arguments. We adapt an existing gradual semantics for bipolar argumentation to determine the aggregated dialectical strength of proposal arguments and define irrational behaviour. We then give a simple aggregation function which produces a final group forecast from rational agents' individual forecasts. We identify and study properties of FAFs and conduct an empirical evaluation which signals FAFs' potential to increase the forecasting accuracy of participants.
翻译:我们引入了预测参数框架(FAFs),这是根据最近的判断预测研究进行预测的新颖的理论依据方法。FAFs包含更新框架,授权(人或人)代理人在一段时间内就结果的概率进行争论,例如政治选举的胜者或通货膨胀率的波动,同时表明代理人的行为被认为不合理,以提高预测的准确性。FAF包括五类论证,如两极辩论,相当于标准对准/对论,以及新颖的提案论点和增加/减少的修正论点。我们调整了现有的两极争论的渐进语义,以确定提案论点的总体辩证强度,并界定非理性行为。我们随后赋予一个简单的汇总功能,根据理性代理人的个人预测作出最后群体预测。我们确定并研究FAFs的性质,并进行经验评估,表明FAFs有可能提高参与者预测的准确性。