Further to an experiment conducted with a deep learning (DL) model, tailored to predict whether a water meter device would fail with passage of time, we came across a very strange case, occurring when we tried to strengthen the training activity of our classifier by using, besides the numerical measurements of consumed water, also other contextual available information, of categorical type. Surprisingly, that further categorical information did not improve the prediction accuracy, which instead fell down, sensibly. Recognized the problem as a case of an excessive increase of the dimensions of the space of data under observation, with a correspondent loss of statistical significance, we changed the training strategy. Observing that every cat...
In many real-world scenarios, data are provided as a potentially infinite stream of samples that are...
Groundwater monitoring at regional scales using conventional methods is challenging because of the n...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Further to an experiment conducted with a deep learning (DL) model, tailored to predict whether a wa...
After a one-year long effort of research on the field, we developed a machine learning-based classif...
Deep learning models are tools for data analysis suitable for approximating (non-linear) relationshi...
In this paper, we describe the design of a machine learning-based classifier, tailored to predict wh...
none5noMany data scientists are currently pointing out that the amount of Machine Learning (ML) rese...
Take an AI learning algorithm and a human trainer with an experience in machine intelligence. Take p...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Machine learning methods are used to build models for classification and regression tasks, among oth...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Missing observational data pose an unavoidable problem in the hydrological field. Deep learning tech...
In many real-world scenarios, data are provided as a potentially infinite stream of samples that are...
Groundwater monitoring at regional scales using conventional methods is challenging because of the n...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Further to an experiment conducted with a deep learning (DL) model, tailored to predict whether a wa...
After a one-year long effort of research on the field, we developed a machine learning-based classif...
Deep learning models are tools for data analysis suitable for approximating (non-linear) relationshi...
In this paper, we describe the design of a machine learning-based classifier, tailored to predict wh...
none5noMany data scientists are currently pointing out that the amount of Machine Learning (ML) rese...
Take an AI learning algorithm and a human trainer with an experience in machine intelligence. Take p...
Supervised Machine Learning (ML) requires that smart algorithms scrutinize a very large number of la...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Machine learning methods are used to build models for classification and regression tasks, among oth...
We confirm that energy dissipation weighting provides the most accurate approach to determining the ...
Machine learning is used nowadays to build models for classification and regression tasks, among oth...
Missing observational data pose an unavoidable problem in the hydrological field. Deep learning tech...
In many real-world scenarios, data are provided as a potentially infinite stream of samples that are...
Groundwater monitoring at regional scales using conventional methods is challenging because of the n...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...