•  142
    Carl Craver’s recent book offers an account of the explanatory and theoretical structure of neuroscience. It depicts it as centered around the idea of achieving mechanistic understanding, i.e., obtaining knowledge of how a set of underlying components interacts to produce a given function of the brain. Its core account of mechanistic explanation and relevance is causal-manipulationist in spirit, and offers substantial insight into casual explanation in brain science and the associated notion of …Read more
  •  212
    Causal Order and Kinds of Robustness
    In Snait Gissis, Ehud Lamm & Ayelet Shavit (eds.), Landscapes of Collectivity in the Life Sciences, Mit Press. pp. 269-280. 2017.
    This paper derives from a broader project dealing with the notion of causal order. I use this term to signify two kinds of parts-whole dependence: Orderly systems have rich, decomposable, internal structure; specifically, parts play differential roles, and interactions are primarily local. Disorderly systems, in contrast, have a homogeneous internal structure, such that differences among parts and organizational features are less important. Orderliness, I suggest, marks one key difference betwee…Read more
  •  48
    Engineering and Biology: Counsel for a Continued Relationship
    with Brett Calcott, Mark L. Siegal, Orkun S. Soyer, and Andreas Wagner
    Biological Theory 10 (1): 50-59. 2015.
    Biologists frequently draw on ideas and terminology from engineering. Evolutionary systems biology—with its circuits, switches, and signal processing—is no exception. In parallel with the frequent links drawn between biology and engineering, there is ongoing criticism against this cross-fertilization, using the argument that over-simplistic metaphors from engineering are likely to mislead us as engineering is fundamentally different from biology. In this article, we clarify and reconfigure the l…Read more
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    Machine-Likeness and Explanation by Decomposition
    Philosophers' Imprint 14. 2014.
    Analogies to machines are commonplace in the life sciences, especially in cellular and molecular biology — they shape conceptions of phenomena and expectations about how they are to be explained. This paper offers a framework for thinking about such analogies. The guiding idea is that machine-like systems are especially amenable to decompositional explanation, i.e., to analyses that tease apart underlying components and attend to their structural features and interrelations. I argue that for dec…Read more