There are many applications and problems in science and engineering that require large-scale numerical simulations and computations. The issue of choosing an appropriate method to solve these problems is very common, however it is not a trivial one, principally because this decision is most of the times too hard for humans to make, or certain degree of expertise and knowledge in the particular discipline, or in mathematics, are required. Thus, the development of a methodology that can facilitate or automate this process and helps to understand the problem, would be of great interest and help. The proposal is to utilize various statistically based machine-learning and data mining techniques to analyze and automate the process of choosing an ...
The objective of this research is to improve the performance of sparse problems that have a wide ran...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
There are many applications and problems in science and engineering that require large-scale numeric...
Scientific and engineering applications are dominated by linear algebra and depend on scalable solut...
Manufacturers of computer hardware are able to continuously sustain an unprecedented pace of progres...
This dissertation is about computational tools based on randomized numerical linear algebra for hand...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
In the last decade, the demand for statistical and computation methods for data analysis that involv...
University of Minnesota Ph.D. dissertation.May 2018. Major: Computer Science. Advisor: Yousef Saad....
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
Huge data sets containing millions of training examples with a large number of attributes are relati...
42 pages, available as LIP research report RR-2009-15Numerical linear algebra and combinatorial opti...
Users of machine learning algorithms need methods that can help them to identify algorithm or their ...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
The objective of this research is to improve the performance of sparse problems that have a wide ran...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...
There are many applications and problems in science and engineering that require large-scale numeric...
Scientific and engineering applications are dominated by linear algebra and depend on scalable solut...
Manufacturers of computer hardware are able to continuously sustain an unprecedented pace of progres...
This dissertation is about computational tools based on randomized numerical linear algebra for hand...
The Algorithm Selection Problem is to select the most appropriate way for solving a problem given a ...
In the last decade, the demand for statistical and computation methods for data analysis that involv...
University of Minnesota Ph.D. dissertation.May 2018. Major: Computer Science. Advisor: Yousef Saad....
Large-scale numerically intensive scientific applications can require tremendous amounts of computer...
Huge data sets containing millions of training examples with a large number of attributes are relati...
42 pages, available as LIP research report RR-2009-15Numerical linear algebra and combinatorial opti...
Users of machine learning algorithms need methods that can help them to identify algorithm or their ...
This survey describes probabilistic algorithms for linear algebraic computations, such as factorizin...
The objective of this research is to improve the performance of sparse problems that have a wide ran...
International audienceDirect methods for the solution of sparse systems of linear equations of the f...
Recent improvements in machine learning methods have significantly advanced many fields in- cluding ...