Recent trends aim to incorporate advanced data analytics capabilities within DBMSs. Linear regression queries are fundamental to exploratory analytics and predictive modeling. However, computing their exact answers leaves a lot to be desired in terms of efficiency and scalability. We contribute a novel predictive analytics model and associated regression query processing algorithms, which are efficient, scalable and accurate. We focus on predicting the answers to two key query types that reveal dependencies between the values of different attributes: (i) mean-value queries and (ii) multivariate linear regression queries, both within specific data subspaces defined based on the values of other attributes. Our algorithms achieve many orders o...
Analysts wishing to explore multivariate data spaces, typically pose queries involving selection ope...
In-database analytics is of great practical importance as it avoids the costly repeated loop data sc...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Recent trends aim to incorporate advanced data analytics capabilities within DBMSs. Linear regressio...
Regression analytics has been the standard approach to modeling the relationship between input and o...
Analysts wishing to explore multivariate data spaces, typically issue queries involving selection op...
Regression Models (RMs) and Machine Learning models (ML) in general, aim to offer high prediction ac...
Fundamental to many predictive analytics tasks is the ability to estimate the cardinality (number of...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
Analysts wishing to explore multivariate data spaces, typically pose queries involving selection op...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scal...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
Multidimensional statistical models are generally computed outside a relational DBMS, exporting data...
In the era of big data, the volume of collected data grows faster than the growth of computational p...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scale...
Analysts wishing to explore multivariate data spaces, typically pose queries involving selection ope...
In-database analytics is of great practical importance as it avoids the costly repeated loop data sc...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...
Recent trends aim to incorporate advanced data analytics capabilities within DBMSs. Linear regressio...
Regression analytics has been the standard approach to modeling the relationship between input and o...
Analysts wishing to explore multivariate data spaces, typically issue queries involving selection op...
Regression Models (RMs) and Machine Learning models (ML) in general, aim to offer high prediction ac...
Fundamental to many predictive analytics tasks is the ability to estimate the cardinality (number of...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
Analysts wishing to explore multivariate data spaces, typically pose queries involving selection op...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scal...
We introduce a predictive modeling solution that provides high quality predictive analytics over agg...
Multidimensional statistical models are generally computed outside a relational DBMS, exporting data...
In the era of big data, the volume of collected data grows faster than the growth of computational p...
We study a novel solution to executing aggregation (and specifically COUNT) queries over large-scale...
Analysts wishing to explore multivariate data spaces, typically pose queries involving selection ope...
In-database analytics is of great practical importance as it avoids the costly repeated loop data sc...
Large organizations have seamlessly incorporated data-driven decision making in their operations. Ho...