Modelling maternal health data in the Philippines using machine learning

In this research, the author aims to provide an overview of the current Open Data (OD) initiative in the Philippines specific to Maternal Health Care (MHC). This research aims to show literary work and reviews on the use of Machine Learning techniques towards building a stronger Open Data framework....

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Main Author: Caramancion, Kevin Matthe M.
Format: text
Language:English
Published: Animo Repository 2017
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Online Access:https://animorepository.dlsu.edu.ph/etd_masteral/5325
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Institution: De La Salle University
Language: English
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spelling oai:animorepository.dlsu.edu.ph:etd_masteral-121632024-09-07T03:31:41Z Modelling maternal health data in the Philippines using machine learning Caramancion, Kevin Matthe M. In this research, the author aims to provide an overview of the current Open Data (OD) initiative in the Philippines specific to Maternal Health Care (MHC). This research aims to show literary work and reviews on the use of Machine Learning techniques towards building a stronger Open Data framework. Open data availability accelerates rapidly in several governments globally. With its multiple proven beneficial advantages to a nation such as increased transparency and removal of silos it is without a doubt the direction to which developing countries will be going to achieve should development is required. This study summarizes the existing OD initiatives in the Philippines and their implementations and future direction. Once made publicly available on a country, OD does not solely function to be viewed, instead it requires even further analysis and richer visualization that should ideally result to recommendations of policy that aims to strengthen a nations commitment to its people and international neighbors. Alongside with continuous advent of OD, simultaneously Information and Communications Technology (ICT) rapidly influences the way every human performs his function. The conjunction of OD and ICT mainly relies on the latters ability to transform the vastly offered data of OD into useful information and advanced knowledge's. With many candidate ICT tools to choose from in applying to OD, this study explores the role of Machine Learning specifically its inception phase clustering in standing as a data to information transformation translator. Machine Learning requires vastly huge data entries to further teach a machine intelligently on how to process an input based from an acquired knowledge pattern. OD just gives that candidate, with its characteristic such as excessive and continuous, This study examines the union of ML and OD result in an improved outcome in achieving the Sustainable Development Goals by the United Nations. In an attempt to seek the implications of this, the author employ Machine Learning in form of clustering to create a Data Model based from a strong OD based dataset, which can provide analysis and visualization tool for these open datasets. 2017-01-01T08:00:00Z text https://animorepository.dlsu.edu.ph/etd_masteral/5325 Master's Theses English Animo Repository Maternal health services--Philippines Machine learning
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Maternal health services--Philippines
Machine learning
spellingShingle Maternal health services--Philippines
Machine learning
Caramancion, Kevin Matthe M.
Modelling maternal health data in the Philippines using machine learning
description In this research, the author aims to provide an overview of the current Open Data (OD) initiative in the Philippines specific to Maternal Health Care (MHC). This research aims to show literary work and reviews on the use of Machine Learning techniques towards building a stronger Open Data framework. Open data availability accelerates rapidly in several governments globally. With its multiple proven beneficial advantages to a nation such as increased transparency and removal of silos it is without a doubt the direction to which developing countries will be going to achieve should development is required. This study summarizes the existing OD initiatives in the Philippines and their implementations and future direction. Once made publicly available on a country, OD does not solely function to be viewed, instead it requires even further analysis and richer visualization that should ideally result to recommendations of policy that aims to strengthen a nations commitment to its people and international neighbors. Alongside with continuous advent of OD, simultaneously Information and Communications Technology (ICT) rapidly influences the way every human performs his function. The conjunction of OD and ICT mainly relies on the latters ability to transform the vastly offered data of OD into useful information and advanced knowledge's. With many candidate ICT tools to choose from in applying to OD, this study explores the role of Machine Learning specifically its inception phase clustering in standing as a data to information transformation translator. Machine Learning requires vastly huge data entries to further teach a machine intelligently on how to process an input based from an acquired knowledge pattern. OD just gives that candidate, with its characteristic such as excessive and continuous, This study examines the union of ML and OD result in an improved outcome in achieving the Sustainable Development Goals by the United Nations. In an attempt to seek the implications of this, the author employ Machine Learning in form of clustering to create a Data Model based from a strong OD based dataset, which can provide analysis and visualization tool for these open datasets.
format text
author Caramancion, Kevin Matthe M.
author_facet Caramancion, Kevin Matthe M.
author_sort Caramancion, Kevin Matthe M.
title Modelling maternal health data in the Philippines using machine learning
title_short Modelling maternal health data in the Philippines using machine learning
title_full Modelling maternal health data in the Philippines using machine learning
title_fullStr Modelling maternal health data in the Philippines using machine learning
title_full_unstemmed Modelling maternal health data in the Philippines using machine learning
title_sort modelling maternal health data in the philippines using machine learning
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/etd_masteral/5325
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