Methods and Applications of Algorithmic Complexity

Beyond Statistical Lossless Compression

AvNicolas Gauvrit,Fernando Soler Toscano

E-bok
Engelska, 2022

2 283 kr

Läs direkt i Bokus Reader – eller ladda ned till din enhet

Beskrivning

This book explores a different pragmatic approach to algorithmic complexity rooted or motivated by the theoretical foundations of algorithmic probability and explores the relaxation of necessary and sufficient conditions in the pursuit of numerical applicability, with some of these approaches entailing greater risks than others in exchange for greater relevance and applicability.

Some established and also novel techniques in the field of applications of algorithmic (Kolmogorov) complexity currently coexist for the first time, ranging from the dominant ones based upon popular statistical lossless compression algorithms (such as LZW) to newer approaches that advance, complement, and also pose their own limitations. Evidence suggesting that these different methods complement each other for different regimes is presented, and despite their many challenges, some of these methods are better grounded in or motivated by the principles of algorithmic information. 

The authors propose that the field can make greater contributions to science, causation, scientific discovery, networks, and cognition, to mention a few among many fields, instead of remaining either as a technical curiosity of mathematical interest only or as a statistical tool when collapsed into an application of popular lossless compression algorithms. This book goes, thus, beyond popular statistical lossless compression and introduces a different methodological approach to dealing with algorithmic complexity.

For example, graph theory and network science are classic subjects in mathematics widely investigated in the twentieth century, transforming research in many fields of science from economy to medicine. However, it has become increasingly clear that the challenge of analyzing these networks cannot be addressed by tools relying solely on statistical methods. Therefore, model-driven approaches are needed. Recent advances in network science suggest that algorithmic informationtheory could play an increasingly important role in breaking those limits imposed by traditional statistical analysis (entropy or statistical compression) in modeling evolving complex networks or interacting networks.  Further progress on this front calls for new techniques for an improved mechanistic understanding of complex systems, thereby calling out for increased interaction between systems science, network theory, and algorithmic information theory, to which this book contributes.


Produktinformation

Utforska kategorier

Hoppa över listan

Mer från samma författare

Nicolas Gauvrit, Jean-Paul Delahaye - Culturomics, E-bok

Culturomics

Nicolas Gauvrit, Jean-Paul Delahaye

E-bok
2013

190 kr

Hoppa över listan

Du kanske också är intresserad av

Nicolas Gauvrit, Jean-Paul Delahaye - Culturomics, E-bok

Culturomics

Nicolas Gauvrit, Jean-Paul Delahaye

E-bok
2013

190 kr

Patrick Blackburn, Hans van Ditmarsch, Maria Manzano, Fernando Soler-Toscano - Tools for Teaching Logic, Häftad

Tools for Teaching Logic

Patrick Blackburn, Hans van Ditmarsch, Maria Manzano, Fernando Soler-Toscano

Häftad, 2011

543 kr

Otto E. Rossler, Hector Zenil, Ali Sanayei, Ivan Zelinka - How Nature Works, E-bok

How Nature Works

Otto E. Rossler, Hector Zenil, Ali Sanayei, Ivan Zelinka

E-bok
2013

2 049 kr

Ivan Zelinka, Ali Sanayei, Hector Zenil, Otto E. Rössler - How Nature Works, Inbunden
Del 5

How Nature Works

Ivan Zelinka, Ali Sanayei, Hector Zenil, Otto E. Rössler

Inbunden, 2013

1 620 kr