Abstract
Conditionals are basic for human reasoning. In our paper,
we present two experiments, which for the first time
systematically compare how people reason about indicative
conditionals (Experiment 1) and counterfactual conditionals
(Experiment 2) in causal and non-causal task
settings (N = 80). The main result of both experiments
is that conditional probability is the dominant response
pattern and thus a key ingredient for modeling causal,
indicative, and counterfactual conditionals. In the paper,
we will give an overview of the main experimental results
and discuss their relevance for understanding how
people reason about conditionals