Information Geometry and Population Genetics
Autoren
Parameter
Mehr zum Buch
The present monograph develops a versatile and profound mathematical perspective of the Wright--Fisher model of population genetics. This well-known and intensively studied model carries a rich and beautiful mathematical structure, which is uncovered here in a systematic manner. In addition to approaches by means of analysis, combinatorics and PDE, a geometric perspective is brought in through Amari's and Chentsov's information geometry. This concept allows us to calculate many quantities of interest systematically; likewise, the employed global perspective elucidates the stratification of the model in an unprecedented manner. Furthermore, the links to statistical mechanics and large deviation theory are explored and developed into powerful tools. Altogether, the manuscript provides a solid and broad working basis for graduate students and researchers interested in this field.
Buchkauf
Information Geometry and Population Genetics, Julian Hofrichter
- Sprache
- Erscheinungsdatum
- 2018
Lieferung
Zahlungsmethoden
Deine Änderungsvorschläge
- Titel
- Information Geometry and Population Genetics
- Sprache
- Englisch
- Autor*innen
- Julian Hofrichter
- Verlag
- Springer
- Erscheinungsdatum
- 2018
- ISBN10
- 3319848054
- ISBN13
- 9783319848051
- Reihe
- Understanding Complex Systems
- Kategorie
- Mathematik
- Beschreibung
- The present monograph develops a versatile and profound mathematical perspective of the Wright--Fisher model of population genetics. This well-known and intensively studied model carries a rich and beautiful mathematical structure, which is uncovered here in a systematic manner. In addition to approaches by means of analysis, combinatorics and PDE, a geometric perspective is brought in through Amari's and Chentsov's information geometry. This concept allows us to calculate many quantities of interest systematically; likewise, the employed global perspective elucidates the stratification of the model in an unprecedented manner. Furthermore, the links to statistical mechanics and large deviation theory are explored and developed into powerful tools. Altogether, the manuscript provides a solid and broad working basis for graduate students and researchers interested in this field.