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Titlebook: Complex Networks XV; Proceedings of the 1 Federico Botta,Mariana Macedo,Ronaldo Menezes Conference proceedings 2024 The Editor(s) (if appli

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书目名称Complex Networks XV
副标题Proceedings of the 1
编辑Federico Botta,Mariana Macedo,Ronaldo Menezes
视频videohttp://file.papertrans.cn/232/231503/231503.mp4
概述Explores and celebrates the interdisciplinary nature of complex networks.One of the most inter- cross-disciplinary events in the field.Presents the latest ideas and findings in the area of network sci
丛书名称Springer Proceedings in Complexity
图书封面Titlebook: Complex Networks XV; Proceedings of the 1 Federico Botta,Mariana Macedo,Ronaldo Menezes Conference proceedings 2024 The Editor(s) (if appli
描述.The International Conference on Complex Networks (CompleNet) brings together researchers and practitioners from diverse disciplines working on areas related to complex networks. CompleNet has been an active conference since 2009. Over the past two decades, we have witnessed an exponential increase in the number of publications and research centres dedicated to this field of Complex Networks (aka Network Science). From biological systems to computer science, from technical to informational networks, and from economic to social systems, complex networks are becoming pervasive for dozens of applications. It is the interdisciplinary nature of complex networks that CompleNet aims to capture and celebrate. The CompleNet conference is one of the most cherished events by scientists in our field. Maybe it is because of its motivating format, consisting of plenary sessions (no parallel sessions); or perhaps the reason is that it finds the perfect balance between young and senior participation, a balance in the demographics of the presenters, or perhaps it is just the quality of the work presented. .
出版日期Conference proceedings 2024
关键词Conference Proceedings; Graph Theory; Complex Systems; Computer Science; Data Science; Social Networks; Ne
版次1
doihttps://doi.org/10.1007/978-3-031-57515-0
isbn_softcover978-3-031-57517-4
isbn_ebook978-3-031-57515-0Series ISSN 2213-8684 Series E-ISSN 2213-8692
issn_series 2213-8684
copyrightThe Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerl
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Inhomogenous Marketing Mix Diffusion,ous) MMD model is an innovation diffusion model, similar to the Bass model, which includes four decision variables (the 4Ps of Marketing: Product, Price, Place, Promotion). We introduce the Inhomogenous MMD (IMMD) model and we conduct two separate experiments: one based on simulation and another one
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,Exploring Ingredient Variability in Classic Russian Cuisine Dishes Through Complex Network Analysislizing a network analysis approach, we scrutinized 460 Olivier salad ingredient lists, alongside 97 vinegret and 127 okroshka ingredient lists, collected through online surveys. The findings highlight the vast diversity and regional variations in ingredient selection, emphasizing the adaptability of
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,Unraveling the Structure of Knowledge: Consistency in Everyday Networks, Diversity in Scientific,in the realm of knowledge evolution and organisation. To that end, we look at using concept networks to capture the associations between these concepts as a domain grows. We compare concept networks as they grow for scientific domains, sci-fi literature, common news topics and science news, using Qu
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