Clustering in Multidimensional Spaces with Applications to Statistical Analysis of Earthquake Clustering

Clustering in Multidimensional Spaces with Applications to Statistical Analysis of Earthquake Clustering

Author: Andrew Lloyd HIcks

Publisher:

Published: 2011

Total Pages: 198

ISBN-13:

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We present in this work a statistical methodology for cluster analysis of seismicity in the time-space-energy domain. Baiesi and Paczuski 's (2004) metric for measuring the distance between earthquakes is considered. The metric consists of a product involving the time interval and spatial distance between two earthquakes, as well as the magnitude of the first one. In this work, the metric is formally proved to define an asymmetric pseudoquasi-distance. The metric can be expanded into two dimensions: a magnitude-normalized time component and a magnitude-normalized space component. A statistical description following a model of Poisson marked point process in spatial and temporal dimensions is given. In this model, nearest-neighbor distance between earthquakes based on Baiesi and Paczuski's metric is found to follow Weibull distribution. Clustering is defined as deviation from this independence model. An existing declustering program that separates dependent and independent earthquakes into fore- and aftershock clusters is examined. This declustering program is improved with the implementation of an Expectation-Maximization algorithm that is able to automatically detect the two populations in an earthquake catalog and reset the separating threshold for nearest-neighbor earthquake distance according to the parameters of the specific catalog. This technique is applied to observed seismicity regionally and world-wide. Bimodal distribution of nearest neighbor distances in these catalogs is shown. The declustering results are used to create maps of fore-shock and aftershock production and compare earthquake clustering to regional properties of the earth's crust.


Soft Computing for Problem Solving

Soft Computing for Problem Solving

Author: Aruna Tiwari

Publisher: Springer Nature

Published: 2021-10-13

Total Pages: 771

ISBN-13: 9811627126

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This two-volume book provides an insight into the 10th International Conference on Soft Computing for Problem Solving (SocProS 2020). This international conference is a joint technical collaboration of Soft Computing Research Society and Indian Institute of Technology Indore. The book presents the latest achievements and innovations in the interdisciplinary areas of soft computing. It brings together the researchers, engineers and practitioners to discuss thought-provoking developments and challenges, in order to select potential future directions. It covers original research papers in the areas including but not limited to algorithms (artificial immune system, artificial neural network, genetic algorithm, genetic programming and particle swarm optimization) and applications (control systems, data mining and clustering, finance, weather forecasting, game theory, business and forecasting applications). The book will be beneficial for young as well as experienced researchers dealing across complex and intricate real-world problems for which finding a solution by traditional methods is a difficult task.


Data Science and Applications

Data Science and Applications

Author: Satyasai Jagannath Nanda

Publisher: Springer Nature

Published: 2024-01-17

Total Pages: 596

ISBN-13: 9819978173

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This book gathers outstanding papers presented at the International Conference on Data Science and Applications (ICDSA 2023), organized by Soft Computing Research Society (SCRS) and Malaviya National Institute of Technology Jaipur, India, from 14 to 15 July 2023. The book is divided into four volumes, and it covers theoretical and empirical developments in various areas of big data analytics, big data technologies, decision tree learning, wireless communication, wireless sensor networking, bioinformatics and systems, artificial neural networks, deep learning, genetic algorithms, data mining, fuzzy logic, optimization algorithms, image processing, computational intelligence in civil engineering, and creative computing.


Data Analysis, Classification and the Forward Search

Data Analysis, Classification and the Forward Search

Author: Sergio Zani

Publisher: Springer Science & Business Media

Published: 2007-08-06

Total Pages: 420

ISBN-13: 3540359788

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This book presents new developments in data analysis, classification and multivariate statistics, and in their algorithmic implementation. The volume offers contributions to the theory of clustering and discrimination, multidimensional data analysis, data mining, and robust statistics with a special emphasis on the novel Forward Search approach. Many papers provide significant insight in a wide range of fields of application. Customer satisfaction and service evaluation are two examples of such emerging fields.