In the wake of the explosive growth in smartphones and cyber-physical systems, there has been an accelerating shift in how data is generated away from centralised data towards on-device generated data. In response, machine learning algorithms are being adapted to run locally on board, potentially hardware limited, devices to improve user privacy, reduce latency and be more energy efficient. However, our understanding of how these device orientated algorithms behave and should be trained is still fairly limited. To address this issue, a method to automatically synthesize reduced-order neural networks (having fewer neurons) approximating the input/output mapping of a larger one is introduced. The reduced order neural network’s weights and bia...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
In the wake of the explosive growth in smartphones and cyber-physical systems, there has been an acc...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
The world of artificial neural networks is an amazing field inspired by the biological model of lear...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
The robustness of neural networks can be quantitatively indicated by a lower bound within which any ...
When deploying pre-trained neural network models in real-world applications, model consumers often e...
With the increasing popularity of machine learning, coupled with increasing computing power, the f...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
Neuromorphic neural network processors, in the form of compute-in-memory crossbar arrays of memristo...
We consider the algorithmic problem of finding the optimal weights and biases for a two-layer fully ...
Methods to certify the robustness of neural networks in the presence of input uncertainty are vital ...
Every optimization problem shares the common objective of finding a minima/maxima, but its applicati...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
In the wake of the explosive growth in smartphones and cyber-physical systems, there has been an acc...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
The world of artificial neural networks is an amazing field inspired by the biological model of lear...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...
The robustness of neural networks can be quantitatively indicated by a lower bound within which any ...
When deploying pre-trained neural network models in real-world applications, model consumers often e...
With the increasing popularity of machine learning, coupled with increasing computing power, the f...
International audienceSparsifying deep neural networks is of paramount interest in many areas, espec...
Neuromorphic neural network processors, in the form of compute-in-memory crossbar arrays of memristo...
We consider the algorithmic problem of finding the optimal weights and biases for a two-layer fully ...
Methods to certify the robustness of neural networks in the presence of input uncertainty are vital ...
Every optimization problem shares the common objective of finding a minima/maxima, but its applicati...
Modern learning problems in nature language processing, computer vision, computational biology, etc....
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
Despite having high accuracy, neural nets have been shown to be susceptible to adversarial examples,...