This paper introduces new algorithms and data structures for quick counting for machine learning datasets. We focus on the counting task of constructing contingency tables, but our approach is also applicable to counting the number of records in a dataset that match conjunctive queries. Subject to certain assumptions, the costs of these operations can be shown to be independent of the number of records in the dataset and loglinear in the number of non-zero entries in the contingency table. We provide a very sparse data structure, the ADtree, to minimize memory use. We provide analytical worst-case bounds for this structure for several models of data distribution. We empirically demonstrate that tractably-sized data structures can be produce...
AbstractThis paper introduces a class of probabilistic counting algorithms with which one can estima...
Count queries belong to a class of summary statistics routinely used in basket analysis, inventory t...
Abstract—We consider the problem of efficiently storing n-gram counts for large n over very large co...
This paper introduces new algorithms and data structures for quick counting for machine learning dat...
The problem of discovering association rules in large data-bases has received considerable research ...
We present AV-space, a new data structure for caching data set statistics for efficiently learning c...
Abstract * We present AV-space, a new data structure for caching data set statistics for efficiently...
In this paper we propose a scaling-up method that is applicable to essentially any induction algorit...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
With the fast growth of large scale and high-dimensional datasets, large-scale machine learning and ...
We describe two techniques that signicantly improve the running time of several stan-dard machine-le...
With the fast growth of large scale and high-dimensional datasets, large-scale machine learning and ...
This thesis improves the scalability of machine learning by studying mergeable learning algorithms. ...
We investigate the problem of counting the number of frequent (item)sets-a problem known to be intra...
Abstract. This text is an informal review of several randomized algorithms that have appeared over t...
AbstractThis paper introduces a class of probabilistic counting algorithms with which one can estima...
Count queries belong to a class of summary statistics routinely used in basket analysis, inventory t...
Abstract—We consider the problem of efficiently storing n-gram counts for large n over very large co...
This paper introduces new algorithms and data structures for quick counting for machine learning dat...
The problem of discovering association rules in large data-bases has received considerable research ...
We present AV-space, a new data structure for caching data set statistics for efficiently learning c...
Abstract * We present AV-space, a new data structure for caching data set statistics for efficiently...
In this paper we propose a scaling-up method that is applicable to essentially any induction algorit...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
With the fast growth of large scale and high-dimensional datasets, large-scale machine learning and ...
We describe two techniques that signicantly improve the running time of several stan-dard machine-le...
With the fast growth of large scale and high-dimensional datasets, large-scale machine learning and ...
This thesis improves the scalability of machine learning by studying mergeable learning algorithms. ...
We investigate the problem of counting the number of frequent (item)sets-a problem known to be intra...
Abstract. This text is an informal review of several randomized algorithms that have appeared over t...
AbstractThis paper introduces a class of probabilistic counting algorithms with which one can estima...
Count queries belong to a class of summary statistics routinely used in basket analysis, inventory t...
Abstract—We consider the problem of efficiently storing n-gram counts for large n over very large co...