In many scientific tasks we are interested in discovering whether there exist any correlations in our data. This raises many questions, such as how to reliably and interpretably measure correlation between a multivariate set of attributes, how to do so without having to make assumptions on distribution of the data or the type of correlation, and, how to efficiently discover the top-most reliably correlated attribute sets from data. In this paper we answer these questions for discovery tasks in categorical data. In particular, we propose a corrected-for-chance, consistent, and efficient estimator for normalized total correlation, by which we obtain a reliable, naturally interpretable, non-parametric measure for correlation over multivariate ...
Time-series data analysis is essential in many modern applications, such as financial markets, senso...
© 2016 IEEE. Today, modern databases with 'Big Dimensionality' are experiencing a growing trend. Exi...
© 2018, Springer-Verlag GmbH Austria, part of Springer Nature. Time-course correlation patterns can ...
In many scientific tasks we are interested in discovering whether there exist any correlations in ou...
textMachine learning, data mining, and statistical methods work by representing real-world objects i...
This paper addresses some of the foundational issues associated with discovering the best few corre-...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
In this thesis, we develop novel methods for correlation analysis in multivariate data, with a speci...
We introduce a method to learn a hierarchy of successively more abstract represen-tations of complex...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Correlation determination brings out relationships in data that had not been seen before and it is i...
When can reliable inference be drawn in fue "Big Data" context? This paper presents a framework for ...
Statistical data mining refers to methods for identifying and validating interesting patterns from a...
We study the problem of mining correlated patterns. Correlated patterns have advantages over associa...
© Springer International Publishing AG 2016. There are different types of correlation patterns betwe...
Time-series data analysis is essential in many modern applications, such as financial markets, senso...
© 2016 IEEE. Today, modern databases with 'Big Dimensionality' are experiencing a growing trend. Exi...
© 2018, Springer-Verlag GmbH Austria, part of Springer Nature. Time-course correlation patterns can ...
In many scientific tasks we are interested in discovering whether there exist any correlations in ou...
textMachine learning, data mining, and statistical methods work by representing real-world objects i...
This paper addresses some of the foundational issues associated with discovering the best few corre-...
Recently, there has been considerable interest in efficiently computing strongly correlated pairs in...
In this thesis, we develop novel methods for correlation analysis in multivariate data, with a speci...
We introduce a method to learn a hierarchy of successively more abstract represen-tations of complex...
Given a set of data objects, correlation computing refers to the problem of efficiently finding grou...
Correlation determination brings out relationships in data that had not been seen before and it is i...
When can reliable inference be drawn in fue "Big Data" context? This paper presents a framework for ...
Statistical data mining refers to methods for identifying and validating interesting patterns from a...
We study the problem of mining correlated patterns. Correlated patterns have advantages over associa...
© Springer International Publishing AG 2016. There are different types of correlation patterns betwe...
Time-series data analysis is essential in many modern applications, such as financial markets, senso...
© 2016 IEEE. Today, modern databases with 'Big Dimensionality' are experiencing a growing trend. Exi...
© 2018, Springer-Verlag GmbH Austria, part of Springer Nature. Time-course correlation patterns can ...