Animals receive noisy and incomplete information, from which we must learn how to react in novel situations. A fundamental problem is that training data is always finite, making it unclear how to generalise to unseen data. But, animals do react appropriately to unseen data, wielding Occam's razor to select a parsimonious explanation of the observations. How they do this is called their inductive bias, and it is implicitly built into the operation of animals' neural circuits. This relationship between an observed circuit and its inductive bias is a useful explanatory window for neuroscience, allowing design choices to be understood normatively. However, it is generally very difficult to map circuit structure to inductive bias. In this work w...
Exploiting data invariances is crucial for efficient learning in both artificial and biological neur...
Synaptic plasticity allows cortical circuits to learn new tasks and to adapt to changing environment...
As theoretical neuroscience has grown as a field, machine learning techniques have played an increas...
Despite enormous progress in machine learning, artificial neural networks still lag behind brains in...
This electronic version was submitted by the student author. The certified thesis is available in th...
We study the structural and statistical properties of $\mathcal{R}$-norm minimizing interpolants of ...
Regularization can mitigate the generalization gap between training and inference by introducing ind...
One of the central elements of any causal inference is an object called structural causal model (SCM...
The ability of deep neural networks to generalise well even when they interpolate their training dat...
A fascinating hypothesis is that human and animal intelligence could be explained by a few principle...
Basic binary relations such as equality and inequality are fundamental to relational data structures...
Machine learning systems often do not share the same inductive biases as humans and, as a result, ex...
A major problem in machine learning is that of inductive bias: how to choose a learner’s hy-pothesis...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
The problem of inductive learning is hard, and--despite much work--no solution is in sight, from neu...
Exploiting data invariances is crucial for efficient learning in both artificial and biological neur...
Synaptic plasticity allows cortical circuits to learn new tasks and to adapt to changing environment...
As theoretical neuroscience has grown as a field, machine learning techniques have played an increas...
Despite enormous progress in machine learning, artificial neural networks still lag behind brains in...
This electronic version was submitted by the student author. The certified thesis is available in th...
We study the structural and statistical properties of $\mathcal{R}$-norm minimizing interpolants of ...
Regularization can mitigate the generalization gap between training and inference by introducing ind...
One of the central elements of any causal inference is an object called structural causal model (SCM...
The ability of deep neural networks to generalise well even when they interpolate their training dat...
A fascinating hypothesis is that human and animal intelligence could be explained by a few principle...
Basic binary relations such as equality and inequality are fundamental to relational data structures...
Machine learning systems often do not share the same inductive biases as humans and, as a result, ex...
A major problem in machine learning is that of inductive bias: how to choose a learner’s hy-pothesis...
Finding useful representations of data in order to facilitate scientific knowledge generation is a u...
The problem of inductive learning is hard, and--despite much work--no solution is in sight, from neu...
Exploiting data invariances is crucial for efficient learning in both artificial and biological neur...
Synaptic plasticity allows cortical circuits to learn new tasks and to adapt to changing environment...
As theoretical neuroscience has grown as a field, machine learning techniques have played an increas...