A Machine Learning-Enabled Clustering Approach for Large-scale Classification of Solar Data

Author(s):  
Ebuka B Osunwoke ◽  
S.M. Safayet Ullah ◽  
Ali Jafarian Abianeh ◽  
Farzad Ferdowsi ◽  
Terrence L Chambers
2018 ◽  
Vol 8 (1) ◽  
Author(s):  
Otkrist Gupta ◽  
Anshuman J. Das ◽  
Joshua Hellerstein ◽  
Ramesh Raskar

2021 ◽  
Author(s):  
Mohammad Hassan Almaspoor ◽  
Ali Safaei ◽  
Afshin Salajegheh ◽  
Behrouz Minaei-Bidgoli

Abstract Classification is one of the most important and widely used issues in machine learning, the purpose of which is to create a rule for grouping data to sets of pre-existing categories is based on a set of training sets. Employed successfully in many scientific and engineering areas, the Support Vector Machine (SVM) is among the most promising methods of classification in machine learning. With the advent of big data, many of the machine learning methods have been challenged by big data characteristics. The standard SVM has been proposed for batch learning in which all data are available at the same time. The SVM has a high time complexity, i.e., increasing the number of training samples will intensify the need for computational resources and memory. Hence, many attempts have been made at SVM compatibility with online learning conditions and use of large-scale data. This paper focuses on the analysis, identification, and classification of existing methods for SVM compatibility with online conditions and large-scale data. These methods might be employed to classify big data and propose research areas for future studies. Considering its advantages, the SVM can be among the first options for compatibility with big data and classification of big data. For this purpose, appropriate techniques should be developed for data preprocessing in order to covert data into an appropriate form for learning. The existing frameworks should also be employed for parallel and distributed processes so that SVMs can be made scalable and properly online to be able to handle big data.


2017 ◽  
Author(s):  
Dajiang Zhu ◽  
Qingyang Li ◽  
Brandalyn C. Riedel ◽  
Neda Jahanshad ◽  
Derrek P. Hibar ◽  
...  

2012 ◽  
Author(s):  
Lykele Hazelhoff ◽  
Ivo Creusen ◽  
Dennis van de Wouw ◽  
Peter H. N. de With

GEOgraphia ◽  
2010 ◽  
Vol 10 (19) ◽  
pp. 7
Author(s):  
Jörg Scheffer

Resumo: As divisões do mundo pautadas por marcos culturais têm uma longa tradição na geografia germanófona. Até os dias de hoje, a cultura é conceitualizada como totalidade, o que leva conseqüentemente a que cada divisão absolutize as diferenças culturais. O artigo descreve esta problemática com base nos conceitos clássicos desde os primórdios da geografia até a geografia do presente. Também para a discussão atual pode-se constatar que a idéia de um conceito holístico de cultura ainda permanece usual e até agora não foi substituída por uma regionalização alternativa. O artigo conclui com uma sugestão de como esta regionalização alternativa poderia ser na era da globalização. Culture as holism: large-scale classification of the world in German-speaking geography Abstract: Divisions of the world using culture as the defining trait have had a long history in German geography. Until this day, culture is being conceptionalized as a whole, with the consequence that each division poses cultural differences as absolutes. This essay aims to describe the problem by using traditional concepts from the beginning of geography up to the present. Even in the current debate, as will be shown, the idea of a holistic concept of culture is still in use and has not been replaced yet by an alternative form of regionalisation. The article will conclude with a suggestion of what this would look like in the age of globalisation. Keywords: Culture, division of the world, holism, globalisation, German classics


2017 ◽  
Author(s):  
Marc B. Harrison ◽  
Brandalyn C. Riedel ◽  
Gautam Prasad ◽  
Neda Jahanshad ◽  
Joshua Faskowitz ◽  
...  

2016 ◽  
Author(s):  
William F Podlaski ◽  
Alexander Seeholzer ◽  
Lukas N Groschner ◽  
Gero Miesenböck ◽  
Rajnish Ranjan ◽  
...  

SummaryIon channel models are the building blocks of computational neuron models. Their biological fidelity is therefore crucial for the interpretability of simulations. However, the number of published models, and the lack of standardization, make the comparison of models with one another and with experimental data difficult. Here, we present a framework for the automated large-scale classification of ion channel models. Using annotated metadata and model responses to a set of voltage-clamp protocols, we assigned 2378 models of voltage- and calcium-gated ion channels coded in NEURON to 211 clusters. The IonChannelGenealogy web interface provides an interactive resource for the categorization of new and existing models and experimental recordings. It enables quantitative comparisons of simulated and/or measured ion channel kinetics, and facilitates field-wide standardization of experimentally-constrained modeling.


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