2015
DOI: 10.1371/journal.pone.0141980
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IoT Big-Data Centred Knowledge Granule Analytic and Cluster Framework for BI Applications: A Case Base Analysis

Abstract: The current rapid growth of Internet of Things (IoT) in various commercial and non-commercial sectors has led to the deposition of large-scale IoT data, of which the time-critical analytic and clustering of knowledge granules represent highly thought-provoking application possibilities. The objective of the present work is to inspect the structural analysis and clustering of complex knowledge granules in an IoT big-data environment. In this work, we propose a knowledge granule analytic and clustering (KGAC) fr… Show more

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Cited by 28 publications
(8 citation statements)
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“…Based on the underlying methods, sub-methods and techniques can also be categorized into several groups, but given the breadth of these techniques, an exhaustive list exceeds the extent of a single paper. Though, a relevant sub-list which has already been used in the field of SC covers mainly: regression [25], optimization [26], induction [27], fuzzy logic [28], classification [10], aggregation [12], and so on.…”
Section: Big Data Analytics Methods and Techniquesmentioning
confidence: 99%
“…Based on the underlying methods, sub-methods and techniques can also be categorized into several groups, but given the breadth of these techniques, an exhaustive list exceeds the extent of a single paper. Though, a relevant sub-list which has already been used in the field of SC covers mainly: regression [25], optimization [26], induction [27], fuzzy logic [28], classification [10], aggregation [12], and so on.…”
Section: Big Data Analytics Methods and Techniquesmentioning
confidence: 99%
“…Meanwhile, there are real-life problems, in which massive parallelization of computations on Apache Hadoop or Spark, and the use of scalable environments, like the Cloud, brought significant improvements in performance of data processing and analysis. Big data challenge was observed and solved in various works devoted to intelligent transport and smart cities [11,19,42,43,74,75,84], water monitoring [12,22,90], social networks analysis [13,14,77], multimedia processing [72,82], internet of things (IoT) [9], social media monitoring [50], Life sciences [3,31,32,44,58,69] and disease data analysis [6,45,81], telecommunication [27], and finance [2], to mention just a few. Many hot issues in various sub-fields of bioinformatics were also solved with the use of Big Data ecosystems and Cloud computing, e.g., mapping nextgeneration sequence data to the human genome and other reference genomes, for use in a variety of biological analyzes including SNP discovery, genotyping and personal genomics [65], sequence analysis and assembly [17,30,34,35,47,62], multiple alignments of DNA and RNA sequences [86,91], codon analysis with local MapReduce aggregations [63], NGS data analysis [8], phylogeny …”
Section: Related Workmentioning
confidence: 99%
“…In 2010, Hilary Mason and Chris Wiggins, introduce the term machine learning in data science. In 2011, Harlan Harris discuses several data science techniques such as: statistics and machine learning; data interpretation, classification, and visualization [8], [26]. In 2012 to till date, the data science progressively integrates with several new technologies, such as-IoE, big-data, clouds, deep learning, extreme learning machine (ELM), and many more emerging technologies [23], [24], [25].…”
Section: Related Studiesmentioning
confidence: 99%