🐰 Welcome to MyBunny.TV – Your Gateway to Unlimited Entertainment! 🐰
Enjoy 10,000+ Premium HD Channels, thousands of movies & series, and experience lightning-fast instant activation.
Reliable, stable, and built for the ultimate streaming experience – no hassles, just entertainment! MyBunny.TV – Cheaper Than Cable • Up to 35% Off Yearly Plans • All NFL, ESPN, PPV Events Included 🐰
🎉 Join the fastest growing IPTV community today and discover why everyone is switching to MyBunny.TV!
Stoica R. Random Patterns and Structures in Spatial Data 2025
To start this P2P download, you have to install a BitTorrent client like
qBittorrent
Category:Other Total size: 30.42 MB Added: 7 months ago (2025-03-10 23:39:08)
Share ratio:9 seeders, 0 leechers Info Hash:10EF42D574ED78062AD120438E2A00FA03C59998 Last updated: 12 hours ago (2025-11-06 01:56:41)
Report Bad Torrent
×
Description:
Textbook in PDF format
The book presents a general mathematical framework able to detect and to characterise, from a morphological and statistical perspective, patterns hidden in spatial data. The mathematical tools employed are Gibbs Markov processes, mainly marked point procesess with interaction, which permits us to reduce the complexity of the pattern. It presents the framework, step by step, in three major parts: modeling, simulation, and inference. Each of these parts contains a theoretical development followed by applications and examples.
Features
Presents mathematical foundations for tackling pattern detection and characterisation in spatial data using marked Gibbs point processes with interactions
Includes application examples from cosmology, environmental sciences, geology, and social networks
Presents theoretical and practical details for the presented algorithms in order to be correctly and efficiently used
Provides access to C++ and R code to encourage the reader to experiment and to develop new ideas
Includes references and pointers to mathematical and applied literature to encourage further study
Random Patterns and Structures in Spatial Data is primarily aimed at researchers in mathematics, statistics, and the above-mentioned application domains. It is accessible for advanced undergraduate and graduate students and thus could be used to teach a course. It will be of interest to any scientific researcher interested in formulating a mathematical answer to the always challenging question: what is the pattern hidden in the data?