There exist large amounts of numerical data that are stored in databases and must be analyzed. Database tables come with a schema and include non-numerical attributes; this is crucial contextual information that is needed for interpreting the numerical values. We propose relational matrix operations that support the analysis of data stored in tables and that preserve contextual information. The result of our approach are precisely defined relational matrix operations and a system implementation in MonetDB that illustrates the seamless integration of relational matrix operations into a relational DBMS
Data mining research has not only development a large number of algorithms, but also enhanced our kn...
Although a solid theoretical foundation of relational data modeling has existed for decades, critica...
The execution logs that are used for process mining in practice are often obtained by querying an op...
Analytical queries often require a mixture of relational and linear algebra operations applied to th...
Contextual association rules represent co-occurrences between contexts and properties of data, where...
Relational algebra operators and mapping to resulting structured query language (SQL) queries are am...
Computational models of the real world often involve analyzing discrete points of data logically rep...
Motivated by an analogy with matrix factorization, we introduce the problem of factorizing relationa...
Traditional modeling approaches and information systems assume static entities that represent all in...
In this paper, we present algorithms which allow an object-oriented querying of existing relational...
Flat, unordered table data and a declarative query language established today’s success of relationa...
In this thesis we introduce a method of storing static text data, and algorithms for operations on t...
AbstractWe propose a conceptually simple, though technically complex, algorithmic method for designi...
It is universally recognized that operational information systems lean on the relational model and d...
The statistical languages and softwares used in économies represent numerical data in multidimension...
Data mining research has not only development a large number of algorithms, but also enhanced our kn...
Although a solid theoretical foundation of relational data modeling has existed for decades, critica...
The execution logs that are used for process mining in practice are often obtained by querying an op...
Analytical queries often require a mixture of relational and linear algebra operations applied to th...
Contextual association rules represent co-occurrences between contexts and properties of data, where...
Relational algebra operators and mapping to resulting structured query language (SQL) queries are am...
Computational models of the real world often involve analyzing discrete points of data logically rep...
Motivated by an analogy with matrix factorization, we introduce the problem of factorizing relationa...
Traditional modeling approaches and information systems assume static entities that represent all in...
In this paper, we present algorithms which allow an object-oriented querying of existing relational...
Flat, unordered table data and a declarative query language established today’s success of relationa...
In this thesis we introduce a method of storing static text data, and algorithms for operations on t...
AbstractWe propose a conceptually simple, though technically complex, algorithmic method for designi...
It is universally recognized that operational information systems lean on the relational model and d...
The statistical languages and softwares used in économies represent numerical data in multidimension...
Data mining research has not only development a large number of algorithms, but also enhanced our kn...
Although a solid theoretical foundation of relational data modeling has existed for decades, critica...
The execution logs that are used for process mining in practice are often obtained by querying an op...