BDCC, Vol. 1, Pages 3: Function Modeling Improves the Efficiency of Spatial Modeling Using Big Data from Remote Sensing

BDCC, Vol. 1, Pages 3: Function Modeling Improves the Efficiency of Spatial Modeling Using Big Data from Remote Sensing

Big Data and Cognitive Computing doi: 10.3390/bdcc1010003

Authors: John Hogland Nathaniel Anderson

Spatial modeling is an integral component of most geographic information systems (GISs). However, conventional GIS modeling techniques can require substantial processing time and storage space and have limited statistical and machine learning functionality. To address these limitations, many have parallelized spatial models using multiple coding libraries and have applied those models in a multiprocessor environment. Few, however, have recognized the inefficiencies associated with the underlying spatial modeling framework used to implement such analyses. In this paper, we identify a common inefficiency in processing spatial models and demonstrate a novel approach to address it using lazy evaluation techniques. Furthermore, we introduce a new coding library that integrates Accord.NET and ALGLIB numeric libraries and uses lazy evaluation to facilitate a wide range of spatial, statistical, and machine learning procedures within a new GIS modeling framework called function modeling. Results from simulations show a 64.3% reduction in processing time and an 84.4% reduction in storage space attributable to function modeling. In an applied case study, this translated to a reduction in processing time from 2247 h to 488 h and a reduction is storage space from 152 terabytes to 913 gigabytes.

BDCC, Vol. 1, Pages 2: A 5G Cognitive System for Healthcare

BDCC, Vol. 1, Pages 2: A 5G Cognitive System for Healthcare

Big Data and Cognitive Computing doi: 10.3390/bdcc1010002

Authors: Min Chen Jun Yang Yixue Hao Shiwen Mao Kai Hwang

Developments and new advances in medical technology and the improvement of people’s living standards have helped to make many people healthier. However, there are still large design deficiencies due to the imbalanced distribution of medical resources, especially in developing countries. To address this issue, a video conference-based telemedicine system is deployed to break the limitations of medical resources in terms of time and space. By outsourcing medical resources from big hospitals to rural and remote ones, centralized and high quality medical resources can be shared to achieve a higher salvage rate while improving the utilization of medical resources. Though effective, existing telemedicine systems only treat patients’ physiological diseases, leaving another challenging problem unsolved: How to remotely detect patients’ emotional state to diagnose psychological diseases. In this paper, we propose a novel healthcare system based on a 5G Cognitive System (5G-Csys). The 5G-Csys consists of a resource cognitive engine and a data cognitive engine. Resource cognitive intelligence, based on the learning of network contexts, aims at ultra-low latency and ultra-high reliability for cognitive applications. Data cognitive intelligence, based on the analysis of healthcare big data, is used to handle a patient’s health status physiologically and psychologically. In this paper, the architecture of 5G-Csys is first presented, and then the key technologies and application scenarios are discussed. To verify our proposal, we develop a prototype platform of 5G-Csys, incorporating speech emotion recognition. We present our experimental results to demonstrate the effectiveness of the proposed system. We hope this paper will attract further research in the field of healthcare based on 5G cognitive systems.

BDCC, Vol. 1, Pages 2: A 5G Cognitive System for Healthcare

BDCC, Vol. 1, Pages 2: A 5G Cognitive System for Healthcare

Big Data and Cognitive Computing doi: 10.3390/bdcc1010002

Authors: Min Chen Jun Yang Yixue Hao Shiwen Mao Kai Hwang

Developments and new advances in medical technology and the improvement of people’s living standards have helped to make many people healthier. However, there are still large design deficiencies due to the imbalanced distribution of medical resources, especially in developing countries. To address this issue, a video conference-based telemedicine system is deployed to break the limitations of medical resources in terms of time and space. By outsourcing medical resources from big hospitals to rural and remote ones, centralized and high quality medical resources can be shared to achieve a higher salvage rate while improving the utilization of medical resources. Though effective, existing telemedicine systems only treat patients’ physiological diseases, leaving another challenging problem unsolved: How to remotely detect patients’ emotional state to diagnose psychological diseases. In this paper, we propose a novel healthcare system based on a 5G Cognitive System (5G-Csys). The 5G-Csys consists of a resource cognitive engine and a data cognitive engine. Resource cognitive intelligence, based on the learning of network contexts, aims at ultra-low latency and ultra-high reliability for cognitive applications. Data cognitive intelligence, based on the analysis of healthcare big data, is used to handle a patient’s health status physiologically and psychologically. In this paper, the architecture of 5G-Csys is first presented, and then the key technologies and application scenarios are discussed. To verify our proposal, we develop a prototype platform of 5G-Csys, incorporating speech emotion recognition. We present our experimental results to demonstrate the effectiveness of the proposed system. We hope this paper will attract further research in the field of healthcare based on 5G cognitive systems.

BDCC, Vol. 1, Pages 1: Welcome to the New Interdisciplinary Journal Combining Big Data and Cognitive Computing

BDCC, Vol. 1, Pages 1: Welcome to the New Interdisciplinary Journal Combining Big Data and Cognitive Computing

Big Data and Cognitive Computing doi: 10.3390/bdcc1010001

Authors: Min Chen

Welcome to Big Data and Cognitive Computing (BDCC).

BDCC, Vol. 1, Pages 1: Welcome to the New Interdisciplinary Journal Combining Big Data and Cognitive Computing

BDCC, Vol. 1, Pages 1: Welcome to the New Interdisciplinary Journal Combining Big Data and Cognitive Computing

Big Data and Cognitive Computing doi: 10.3390/bdcc1010001

Authors: Min Chen

Welcome to Big Data and Cognitive Computing (BDCC).