In this paper, the relevance of deep neural network (DNN) is studied in big data scenarios, specifically for prognostics applications. It is observed that fault predictions can be performed more efficiently when DNN is used with a pre-processing step. A novel hierarchical dimension reduction (HDR) approach is therefore proposed as a pre-processing step to DNN. This two-step approach is shown to be effective in extracting value from complex and uncertain big data. It is shown that use of HDR prior to DNN improves convergence and allows for the possibility of reduction in model size without any drop in accuracy. A comprehensive methodology is developed to facilitate prognostics using DNN. Simulation results are included to demonstrate the ove...
Accurate credit risk prediction can help companies avoid bankruptcies and make adjustments ahead of ...
The determination of coronary failure has transformed into troublesome analytic effort in the presen...
The PreventIT project is an EU Horizon 2020 project aimed at preventing early functional decline at ...
In this paper, the relevance of deep neural network (DNN) is studied in big data scenarios, specific...
Non-numerical data, such as images and inspection records, contain information about industrial syst...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Thesis (Ph.D.)--University of Washington, 2012During the course of care, patients frequently develop...
In the last five years, the inclusion of Deep Learning algorithms in prognostics and health manageme...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Predictive analytics is a technique to make predictions about future unknown events by analyzing cur...
Big Data is collecting large amounts of data. That's big. What is Uncontrollable with the Convention...
We have A Three Dataset Heart Attack Analysis and Prediction and the other one is cardiovascular di...
Deep learning (DL) is a branch of machine learning and artificial intelligence that has been applied...
High-dimensional reliability analysis remains a grand challenge since most of the existing methods s...
Application of deep learning techniques for calculation of pre-test probability(PTP) scoring of hear...
Accurate credit risk prediction can help companies avoid bankruptcies and make adjustments ahead of ...
The determination of coronary failure has transformed into troublesome analytic effort in the presen...
The PreventIT project is an EU Horizon 2020 project aimed at preventing early functional decline at ...
In this paper, the relevance of deep neural network (DNN) is studied in big data scenarios, specific...
Non-numerical data, such as images and inspection records, contain information about industrial syst...
In this digital age, big-data sets are commonly found in the field of healthcare, manufacturing and ...
Thesis (Ph.D.)--University of Washington, 2012During the course of care, patients frequently develop...
In the last five years, the inclusion of Deep Learning algorithms in prognostics and health manageme...
In the wake of the revolution brought by Deep Learning, we believe neural networks can be leveraged ...
Predictive analytics is a technique to make predictions about future unknown events by analyzing cur...
Big Data is collecting large amounts of data. That's big. What is Uncontrollable with the Convention...
We have A Three Dataset Heart Attack Analysis and Prediction and the other one is cardiovascular di...
Deep learning (DL) is a branch of machine learning and artificial intelligence that has been applied...
High-dimensional reliability analysis remains a grand challenge since most of the existing methods s...
Application of deep learning techniques for calculation of pre-test probability(PTP) scoring of hear...
Accurate credit risk prediction can help companies avoid bankruptcies and make adjustments ahead of ...
The determination of coronary failure has transformed into troublesome analytic effort in the presen...
The PreventIT project is an EU Horizon 2020 project aimed at preventing early functional decline at ...