Evaluation of generative models is mostly based on the comparison between the estimated distribution and the ground truth distribution in a certain feature space. To embed samples into informative features, previous works often use convolutional neural networks optimized for classification, which is criticized by recent studies. Therefore, various feature spaces have been explored to discover alternatives. Among them, a surprising approach is to use a randomly initialized neural network for feature embedding. However, the fundamental basis to employ the random features has not been sufficiently justified. In this paper, we rigorously investigate the feature space of models with random weights in comparison to that of trained models. Further...
Abstract. The purpose of this paper is to introduce and validate Ran-dom Brains, a novel artificial ...
Understanding the impact of data structure on the computational tractability of learning is a key ch...
Probabilistic generative models can be used for compression, denoising, inpainting, texture synthesi...
Graph neural networks (GNNs) are effective models for representation learning on relational data. Ho...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Understanding the impact of data structure on the computational tractability of learning is a key ch...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
In this work, we provide a characterization of the feature-learning process in two-layer ReLU networ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
Regularization plays an important role in machine learning systems. We propose a novel methodology f...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Understanding how feature learning affects generalization is among the foremost goals of modern deep...
Generative modeling and inference are two broad categories in unsupervised learning whose goal is to...
Abstract. The purpose of this paper is to introduce and validate Ran-dom Brains, a novel artificial ...
Understanding the impact of data structure on the computational tractability of learning is a key ch...
Probabilistic generative models can be used for compression, denoising, inpainting, texture synthesi...
Graph neural networks (GNNs) are effective models for representation learning on relational data. Ho...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Understanding the impact of data structure on the computational tractability of learning is a key ch...
Randomness has always been present in one or other form in Machine Learning (ML) models. The last fe...
In this work, we provide a characterization of the feature-learning process in two-layer ReLU networ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
Regularization plays an important role in machine learning systems. We propose a novel methodology f...
Random feature mapping (RFM) is the core operation in the random weight neural network (RWNN). Its q...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
The Random Neural Network (RNN) has received, since its inception in 1989, considerable attention an...
Understanding how feature learning affects generalization is among the foremost goals of modern deep...
Generative modeling and inference are two broad categories in unsupervised learning whose goal is to...
Abstract. The purpose of this paper is to introduce and validate Ran-dom Brains, a novel artificial ...
Understanding the impact of data structure on the computational tractability of learning is a key ch...
Probabilistic generative models can be used for compression, denoising, inpainting, texture synthesi...