Accuracy-first epistemology and scientific progress
Contributed PapersFormal Epistemology01:15 PM - 01:45 PM (America/New_York) 2022/11/11 18:15:00 UTC - 2022/11/11 18:45:00 UTC
The accuracy-first program attempts to ground epistemology in the norm that one’s beliefs should be as accurate as possible, where accuracy is measured using a scoring rule. We argue that considerations of scientific progress suggest that such a monism about epistemic value is untenable. In particular, we argue that counterexamples to the standard scoring rules are ubiquitous in the history of science, and hence that these scoring rules cannot be regarded as a precisification of our intuitive concept of epistemic value.
Contributed PapersFormal Epistemology01:45 PM - 02:15 PM (America/New_York) 2022/11/11 18:45:00 UTC - 2022/11/11 19:15:00 UTC
Statistical analysis is often used to evaluate the strength of evidence for or against scientific hypotheses. Here we consider evidence measurement from the point of view of representational measurement theory, focusing in particular on the 0-points of measurement scales. We argue that a properly calibrated evidence measure will need to count up from absolute 0, in a sense to be defined, and that this 0-point is likely to be something other than what one might have expected. This suggests the need for a new theory of statistical evidence in the context of which calibrated evidence measurement becomes tractable.
Contributed PapersFormal Epistemology02:15 PM - 02:45 PM (America/New_York) 2022/11/11 19:15:00 UTC - 2022/11/11 19:45:00 UTC
Standard articulations of Inference to the Best Explanation (IBE) imply the uniqueness claim that exactly one explanation should be inferred in response to an explanandum. This claim has been challenged as being both too strong (sometimes agnosticism between candidate explanatory hypotheses seems the rational conclusion) and too weak (in cases where multiple hypotheses might sensibly be conjointly inferred). I propose a novel interpretation of IBE that retains the uniqueness claim while also allowing for agnostic and conjunctive conclusions. I then argue that a particular probabilistic explication of explanatory goodness helpfully guides us in navigating such options when using IBE.
Against theory-motivated data collection in science
Contributed PapersFormal Epistemology02:45 PM - 03:15 PM (America/New_York) 2022/11/11 19:45:00 UTC - 2022/11/11 20:15:00 UTC
We study the epistemic success of different data collection strategies. We develop a computational multi-agent model of the scientific process that jointly formalizes its core aspects: data collection, data explanation, and social learning. We find that agents who choose new experiments at random develop the most accurate accounts of the world. On the other hand, the agents following the confirmation, falsification, crucial experimentation (theoretical disagreement), or novelty-motivated strategies end up with an illusion of epistemic success: they develop promising accounts for the data they collected, while completely misrepresenting the ground truth that they intended to learn about.