
Melissa Fusco
· Associate Professor of Philosophy; Director of Graduate AdmissionsVerifiedColumbia University · Philosophy
Active 2014–2025
Research topics
- Computer Science
- Mathematical economics
- Mathematics
- Epistemology
- Philosophy
- Political Science
- Discrete mathematics
- Programming language
- Economics
- Law
- Linguistics
Selected publications
Counterfactuals and Chancy Relativism
Pacific philosophical quarterly · 2025-10-16
article1st authorCorrespondingABSTRACT Alan Hájek (2024) argues for counterfactual skepticism, the view that many (or “most”) counterfactuals are false. In this paper, I consider what Hájek's semantic position looks like when we pair it with a MacFarlane (2008, 2014)‐style relativist postsemantics. On this view, a counterfactual utterance may start out false, but later come to be assessed as true—even if the counterfactual's antecedent and consequent express eternalist propositions. The package view, which I call chancy relativism , preserves Hájek's metaphysical commitments but pairs smoothly with speakers' intuitions about retrospective assessments.
Imaging and the diachronic Dutch Book
Philosophy and Phenomenological Research · 2025-11-18
article1st authorCorrespondingAbstract Causal decision theorists update by conditionalization on their own acts, just like evidential decision theorists and rational pure observers do. But should they? Imaging, due to Lewis and Gärdenfors, can be treated as a counterfactual‐inspired recipe for belief revision. In a decision‐theoretic context, a longstanding, though not popular, gloss on imaging involves norms of update: conditioning is the correct response to learning that is the case, while imaging is the correct response to making the case. Here, I aim to counter a major obstacle to the viability of the claim that it can be rational to update by imaging: the diachronic Dutch Book.
Economics and Philosophy · 2024-03-26 · 1 citations
articleOpen access1st authorCorrespondingAbstract Stalnaker’s ‘Assertion’ (1978 [1999]) offers a classic account of diagonalization as an approach to the meaning of a declarative sentence in context. Here I explore the relationship between diagonalization and some puzzles in Mahtani’s book The Objects of Credence . Diagonalization can influence how we think about both credence and desirability, so it influences both components of a standard expected utility equation. In that vein, I touch on two of Mahtani’s case-studies, chance and the finite version of the Two Envelope Paradox.
Analysis · 2023-07-01 · 3 citations
article1st authorCorrespondingAbstract In ‘The logic of partial supposition’ (Analysis vol. 81), Benjamin Eva and Stephan Hartmann investigate partial imaging, a credence-revision method which combines the partiality familiar from Jeffrey Conditioning(The Logic of Decision, 1983) with the formal notion of imaging familiar from Lewis’s ‘Causal decision theory’ (1981). They argue that because partial imaging is non-monotonic, it ‘fail[s] to provide a plausible account of the norms of partial subjunctive suppositions’. In this note, I present a notion of partial imaging that does satisfy monotonicity, and discuss some of the applications and ramifications. The account frames conditioning as a form of imaging, and rejects Gärdenfors’s principle of linearity in ‘Imaging and conditionalization’ (1982).
Absolution of a Causal Decision Theorist
Noûs · 2023-06-23 · 2 citations
articleOpen access1st authorCorrespondingAbstract I respond to a dilemma for Causal Decision Theory (CDT) under determinism, posed in Adam Elga's paper “Confessions of a Causal Decision Theorist”. The treatment I present highlights (i) the status of laws as predictors, and (ii) the consequences of decision dependence, which arises natively out of Jeffrey Conditioning and CDT's characteristic equation. My argument leverages decision dependence to work around a key assumption of Elga's proof: to wit, that in the two problems he presents, the CDTer must employ subjunctive‐suppositional (rather than evidential) transformations of a shared prior.
Dutch‐booking indicative conditionals
Philosophy and Phenomenological Research · 2022 · 17 citations
1st authorCorresponding- Computer Science
- Epistemology
- Philosophy
Abstract Recent literature on Stalnaker's Thesis, which seeks to vindicate it from Lewis (1976)'s triviality results, has featured linguistic data that is prima facie incompatible with Conditionalization in iterated cases (McGee 1989, 2000; Kaufmann 2015; Khoo & Santorio, 2018). In a recent paper (2021), Goldstein & Santorio make a bold claim: they hold that these departures light the way to a new, non‐conditionalizing theory of rational update. Here, I consider whether this new form of update is subject to a Dutch book. On the official, invariantist version of the theory, I show that the answer is “yes”. On a competing, contextualist theory of indicative conditionals (Bacon, 2015), the answer is “no”, for reasons that have familiar connections to the limits of textbook Bayesianism. After presenting a concrete case, I explore the dialectical ramifications. The upshot is some hard choices for theories that seek to save the linguistic phenomena.
Journal of Philosophical Logic · 2020 · 6 citations
1st authorCorresponding- Computer Science
- Epistemology
- Philosophy
Free choice effects and exclusive disjunction
Inquiry · 2020 · 4 citations
1st authorCorresponding- Political Science
- Mathematical economics
- Economics
This paper presents experimental data relevant to understanding the modal free choice effect (Kamp, 1973) when there are more than two disjuncts under the relevant modal operator. The results suggest that speakers' willingness to draw free choice inferences is correlated with whether the embedded disjuncts are modally separable, in a sense brought into focus by considering cases within which the relevant propositions fail to be pairwise redundant but are redundant as a set.
A two-dimensional logic for diagonalization and the a priori
Synthese · 2020-03-02 · 4 citations
article1st authorCorrespondingThe Philosophical Review · 2020-01-01
article1st authorCorrespondingIn her wide-ranging book, Probabilistic Knowledge, Sarah Moss presents a unified account of probabilistic content in theories of belief, assertion, and knowledge. The first part (chaps. 1–2.3) begins by arguing for a particular way of incorporating credence into an extant picture of belief—that is, by analyzing credence as a relation between an agent and a probabilistic content. The second part (chaps. 2.4–4) moves on to language, with a focus on epistemic vocabulary, indicative conditionals, and logical connectives. The third (chaps. 5–10) turns to knowledge. Here, the central thesis is that all grades of Bayesian credence—traditionally considered as mere partial belief—can in fact constitute knowledge in many of its central epistemological roles. Additional chapters turn to applications, including action and decision (chap. 9) and the role of statistical evidence in the law (chap. 10).In each case, the role played by individual possible worlds on standard theories—as well as some of the roles played by worlds in compositional semantic treatments of logical operators, epistemic modals, and conditionals—is played in Moss's book by probability spaces: triples < Ω, F, m> consisting of a sample space, a sigma-algebra, and a probability measure. Sets of probability spaces are Moss's choice for modeling content in the belief-assertion-knowledge trifecta, as sets of (mere) worlds (viz., propositions) model content in the theories she seeks to upgrade. Content satisfaction—for example, the content that it is .4 likely to rain—goes by containment: an agent's probability space satisfies this content iff it is contained in the set of all probability spaces that assign .4 to the proposition that it will rain. Uptake goes by simple intersection: perceptual content, for example, is intersected with one's probability space or representor; asserted content is intersected with an upgraded version of the common ground.The book is written in a clear and accessible style, and while the overall picture coheres around the upgrade to probabilistic content, arguments in the language, mind, and knowledge strands are to a large degree self-contained.1 Below, I focus on a selection of the main arguments, with an eye to issues that have already begun, and most likely will continue, to provoke the most discussion.We begin with the thesis that assertions like (1)(1) It is .9 likely that it is raining.typically express, and aim to engender coordination on, credence (here, .9 credence) in the proposition it is raining.At a first pass, Moss takes on board the equation (in Dummett's [1973] terms) between assertoric content and ingredient sense and thus holds that the compositional semantic value of (1) in context is a probabilistic content of the kind described above: the set of probability spaces assigning .9 to it is raining.This first-pass analysis does not eliminate a need for the more traditional notion of worldly content as the object of credence. The compositional contribution of the prejacent “that it is raining” to (1) is a possible-worlds constraint on how things might be: that is, it is a (mere) proposition. Assertion (1) thus contrasts with (a noncollapsed reading of) a sentence like (2): (2) It is .9 likely that it might be raining.which is assertable, Moss argues, in, for example, a case where there is a one-tenth chance we will get evidence that rules out that it is raining. In (2), the compositional contribution of the prejacent under “likely”—since it includes “might”—seems itself to be probabilistic. Hence there's a puzzle for the compositional semantics: what type of object—a set of worlds or a set of probability spaces—best models the argument of “it is .9 likely”?Moss's response is to generalize to the worst (or, at least, highest-type) case: content embedded under, for example, “likely” is always probabilistic, though sometimes only trivially (or “nominally”) so.2 Returning to (1), Moss posits the presence of a hidden type-lifting operator ‘C’ (think: certainly) with scope over the prejacent, yielding (1′) as the true LF of (1):(1′) It is .9 likely that C (it is raining).Now, a compositional semantics operating on (1′) must assign a numerical probability (.9) to something that is itself epistemic: ‘certainly’-claims are accepted or rejected by probability spaces rather than individual worlds. This is “thorough probabilism” at work: semantic values are probability space-sensitive “all the way down.” This choice lends itself to the general formal picture of possibility, high probability, and n-valued credence sketched in Moss's appendix: a proposition's being (epistemically) possible is its being possibly certain; a proposition's being highly probable is its being highly probably certain; and a proposition's being assigned a credence n is the value n's being associated with the region of the sample space throughout which that proposition is certain.Beyond the type-shifting operator ‘C’, there is additional syntactic enrichment of LFs in Moss's picture, in the service of a very flexible brand of contextualism. On her semantics, epistemic operators, conditionals, and logical operators carry hidden indices which, relative to gc (.), the contextually available assignment function, denote questions (formally, Hamblin-style [1973] partitions of logical space or Roberts-style [1996] “Questions under Discussion”). These partitions isolate some important consideration of interest in evaluating a probabilistic object-language claim. Different indices on epistemic operators correspond to cases in which different questions influence the communicated content of, for example, indicative conditionals (for which Moss favors a strict conditional analysis).As an illustration, consider the famous Sly Pete case of Gibbard (1981). In a game of poker, Pete has a worse hand than his opponent does. But by cheating, Pete has also gained knowledge of this fact, and hence will fold. Different indices j and k such that gc (j ) = did Pete cheat? = {Pete cheated, Pete didn't cheat} and gc (k) = did Pete have a winning hand? = {Pete had a winning hand, Pete did not have a winning hand} on ‘likely’ support the apparently dueling takes on the embedded conditional ‘if Pete called, he won/lost’ in (3) and (4):(3) It is likelyj that ifi Pete called, he won.(4) It is likelyk that ifi Pete called, he lost.3Formally, (3) is true because within {Pete cheated, Pete didn't cheat}, the agent considers the former to be likely. The region of her sample space that's settled on Pete's having cheated supports the strict conditional ‘if Pete called, he won’. However—turning to (4)—within {Pete had a winning hand, Pete did not have a winning hand}, the agent considers the latter to be likely. The region of the sample space that's settled on Pete's having the weaker hand supports the strict conditional ‘if Pete called, he lost’. Hence given the different indices, the prima facie incompatible (3) and (4) can both characterize the same credal state in the same context.In epistemology, Moss's high-level thesis is that all degrees of Bayesian credence can constitute knowledge. Offered in support of her claim are the contention that states of credence are factive (given a minimalist construal of what “factive” amounts to), are Gettierizable, and play the knowledge role with respect to rational action.The constitution thesis is simple. But it is also radical in a number of ways—for example when it comes to reasoned change in view. Extreme credences—of 0 or 1—are persistent in a Bayesian framework. But intermediate values can fluctuate. Indeed, we may be certain they will, such as when we anticipate observing the outcome of an experiment. As Moss puts it, “When you have a .6 credence that Jones smokes, you necessarily also believe it might be that Jones certainly doesn't smoke” (138).4 If intermediate-valued credence can constitute knowledge, it is knowledge that has this changeling character built in.Such a view contrasts with a more restricted, “Meno-inspired’’ way of conceptualizing knowledge for Bayesians, wherein the stability of extreme-valued credences in the light of new information is what makes them (uniquely) knowledge-like. On this view, my expressed .6 credence that (e.g.) the dice will land even can't be knowledge, because in a moment—after observing how the dice land—I will know something incompatible with that very claim: either that they certainly came up even or that they certainly didn't. As Gardenfors (1982: 749) puts it: “A fundamental presupposition of the Bayesian doctrine is that, if a sentence B is accepted as known in a given state of knowledge and if a sentence A is consistent with what is accepted as known, then B should be accepted as known in the revised state of belief which is obtained by adding A as a new piece of knowledge” (emphasis added). The quoted claim is false on Moss's picture, instantiating B with ‘it is .6 likely that the dice land even’, A with ‘the dice certainly don't land even’, and glossing ‘A and B are consistent’ as entailing ‘the claim ‘B and might A’ is consistent’.Moss is, of course, aware of this “undermining” feature of credence and its ramifications for the constitution thesis. Her response—in addition to motivating cases where epistemic contradictions like ‘it's .6 likely that p and it might be that certainly not-p’ can sound true to ordinary speakers—is to follow an analogy with contextualist responses to the raising-to-salience of skeptical scenarios (chap. 7.3). The idea is that the presence of some incoming information—such as an impending observation of how the dice land—can act as a challenging alternative to the epistemic status of intermediate credence, in much the same way that raising possibilities regarding evil demons can challenge ordinary knowledge about, for example, having hands. It may generally be true in such skeptical contexts that knowledge “vanishes.” But (the argument goes) that does not mean that knowledge fails to be present in unchallenged cases. Returning to the case of intermediate credence, an impending news bulletin, the presence of a more perfectly informed expert (138), or active consideration of the omniscient credences of God (141) may all successfully disqualify intermediate credence from knowledge-like status. Yet, Moss suggests, this is no argument that intermediate credence generally fails to be knowledge.The gambit, of course, is unusual in casting situations where experts are present or observations are about to be made—intuitively, situations in which extra knowledge is there to be gained—in the role of situations where knowledge vanishes under skeptical pressure. But such a view may be inevitable given the broader picture at work in the book. As Moss's compositional semantics is probabilistic all the way down, so knowledge is probabilistic through and through: knowers are afloat on a fully Bayesian sea.Thanks to Josh Dever, Dorothy Edgington, Michael Nielsen, and Rachel Rudolph for helpful discussion of this material.
Frequent coauthors
- 4 shared
Arif Ahmed
- 1 shared
José Luis Bermúdez
- 1 shared
Chrisoula Andreou
University of Utah
- 1 shared
Huw Price
University of Cambridge
- 1 shared
Alexander W. Kocurek
Cornell University
- 1 shared
Preston Greene
Nanyang Technological University
- 1 shared
Reuben Stern
Duke University
- 1 shared
Robert Stalnaker
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