In many real-world applications of data mining, datasets can be represented using matrices, where rows of the matrix correspond to objects (or data instances) and columns to features (or attributes). Often the datasets are in high-dimensional feature space. For example, in the vector space model of text data, the feature dimension is the vocabulary size. If representing a social network using an adjacency matrix, the feature dimension corresponds to the number of objects in the network. Many other datasets also fall into this category, such as genetic datasets, images, and medical datasets. Even though the feature dimension is enormous, a common observation is that the high-dimensional datasets may (approximately) lie in a subspace of s...
We present an extension of the recently introduced Generalized Matrix Learning Vector Quantization a...
Representing and handling high-dimensional data has been increasingly ubiquitous in many real world-...
Recently, low-rank and sparse model-based dimensionality reduction (DR) methods have aroused lots of...
In many real-world applications of data mining, datasets can be represented using matrices, where ro...
Thesis (Ph.D.)--University of Washington, 2015The topic of learning matrix structures in the emph{hi...
We study two major topics on statistical inference for high dimensional data with low rank structure...
In the real world, many kinds of high-dimensional data, such as images, documents, user-rating data,...
We study the problem of embedding high-dimensional visual data into low-dimensional vector represent...
This thesis shows how we can exploit low-dimensional structure in high-dimensional statistics and ma...
Kernel embedding of distributions has led to many recent advances in machine learning. However, late...
Many problems in signal processing, machine learning and computer vision can be solved by learning l...
Introduction. Dimensionality reduction is an important task in machine learning. It arrises when the...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Unsupervised learning involves inferring the inherent structures or patterns from unlabeled data. Si...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
We present an extension of the recently introduced Generalized Matrix Learning Vector Quantization a...
Representing and handling high-dimensional data has been increasingly ubiquitous in many real world-...
Recently, low-rank and sparse model-based dimensionality reduction (DR) methods have aroused lots of...
In many real-world applications of data mining, datasets can be represented using matrices, where ro...
Thesis (Ph.D.)--University of Washington, 2015The topic of learning matrix structures in the emph{hi...
We study two major topics on statistical inference for high dimensional data with low rank structure...
In the real world, many kinds of high-dimensional data, such as images, documents, user-rating data,...
We study the problem of embedding high-dimensional visual data into low-dimensional vector represent...
This thesis shows how we can exploit low-dimensional structure in high-dimensional statistics and ma...
Kernel embedding of distributions has led to many recent advances in machine learning. However, late...
Many problems in signal processing, machine learning and computer vision can be solved by learning l...
Introduction. Dimensionality reduction is an important task in machine learning. It arrises when the...
The information explosion of the past few decades has created tremendous opportunities for Machine L...
Unsupervised learning involves inferring the inherent structures or patterns from unlabeled data. Si...
The last few years have witnessed the rise of the big data era, which features the prevalence of dat...
We present an extension of the recently introduced Generalized Matrix Learning Vector Quantization a...
Representing and handling high-dimensional data has been increasingly ubiquitous in many real world-...
Recently, low-rank and sparse model-based dimensionality reduction (DR) methods have aroused lots of...