//
sign in
Profile
by @danabra.mov
Profile
by @dansshadow.bsky.social
Profile
by @jimpick.com
AviHandle
by @danabra.mov
AviHandle
by @dansshadow.bsky.social
AviHandle
by @katherine.computer
EventsList
by @katherine.computer
ProfileHeader
by @dansshadow.bsky.social
ProfileHeader
by @danabra.mov
ProfileMedia
by @danabra.mov
ProfilePlays
by @danabra.mov
ProfilePosts
by @danabra.mov
ProfilePosts
by @dansshadow.bsky.social
ProfileReplies
by @danabra.mov
Record
by @atsui.org
Skircle
by @danabra.mov
StreamPlacePlaylist
by @katherine.computer
+ new component
ProfilePosts









Loading...
To help tackle this complexity, I show that a simple, tuneable synthetic model for non-deterministic GP maps reproduces key shared features of non-deterministic GP maps derived from biophysical models.
Beyond providing a practical tool, the model also shows that these shared structural features can emerge from a small number of ingredients — suggesting they may be quite general. Paper: doi.org/10.1371/jour...
Last few days to submit your abstract 📮
These shared features include phenotypic bias, genetic correlations and a non-negative trend between phenotypic robustness and evolvability. These features make the model useful as a tractable system for future work on how the structure of non-deterministic GP maps shapes evolutionary dynamics.
In this paper, I go beyond this limitation by considering non-deterministic GP maps, where each genotype generates an ensemble of phenotypes. These maps can be characterised in close analogy with “classic” GP maps, but they are harder to build computationally and harder to understand conceptually.