This work maps deep neural networks to classical Ising spin models, allowing them to be described using statistical thermodynamics. The density of states shows that structures emerge in the weights after they have been trained -- well-trained networks span a much wider range of realizable energies compared to poorly trained ones. These structures propagate throughout the entire network and are not observed in individual layers. The energy values correlate to performance on tasks, making it possible to distinguish networks based on quality without access to data. Thermodynamic properties such as specific heat are also studied, revealing a higher critical temperature in trained networks
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
Deep Learning architectures give brilliant results in a large variety of fields, but a comprehensive...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
Conventionally, the study of phases in statistical mechan- ics is performed with the help of random ...
Conventionally, the study of phases in statistical mechan- ics is performed with the help of random ...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
In recent years, the amount of data available on biological systems such as genetic regulatory netwo...
Generative models offer a direct way to model complex data. Among them, energy-based models provide ...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
Network science provides very powerful tools for extracting information from interacting data. Altho...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
Deep Learning architectures give brilliant results in a large variety of fields, but a comprehensive...
We demonstrate the capability of a convolutional deep neural network in predicting the nearest-neigh...
Conventionally, the study of phases in statistical mechan- ics is performed with the help of random ...
Conventionally, the study of phases in statistical mechan- ics is performed with the help of random ...
Recent advances in deep learning and neural networks have led to an increased interest in the applic...
This thesis characterizes the training process of deep neural networks. We are driven by two apparen...
In recent years, the amount of data available on biological systems such as genetic regulatory netwo...
Generative models offer a direct way to model complex data. Among them, energy-based models provide ...
We present a physically-motivated topology of a deep neural network that can efficiently infer exten...
Network science provides very powerful tools for extracting information from interacting data. Altho...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
The renormalization group (RG) is an essential technique in statistical physics and quantum field th...
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
Data is scaling exponentially in fields ranging from genomics to neuroscience to economics. A centra...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...