Reliable Reasoning (Jean Nicod Lectures): Induction and Statistical Learning Theory - Softcover

9780262517348: Reliable Reasoning (Jean Nicod Lectures): Induction and Statistical Learning Theory
Alle Exemplare der Ausgabe mit dieser ISBN anzeigen:
 
 
Críticas:
"In their interesting and stimulating book Reliable Reasoning, Harman, a philosopher, and Kulkarni, an information scientist, illuminate the philosophical issues related to inductive reasoning by studying it in terms of the mathematics of probabilistic learning. One of the great virtues of this approach is that the inductive inference made through learning can survive changes in the probabilistic modeling assumptions. I find that the authors have made a convincing and persuasive case for rigorously studying the philosophical issues related to inductive inference using recent ideas from the science of artificial intelligence." Sanjoy K. Mitter , Professor of Electrical Engineering, MIT "This thoroughly enjoyable little book on learning theory reminds me of many classics in the field, such as Nilsson's *Learning Machines* or Minksy and Papert's *Perceptrons*: It is both a concise and timely tutorial 'projecting' the last decade of complex learning issues into simple and comprehensible forms and a vehicle for exciting new links among cognitive science, philosophy, and computational complexity." Stephen J. Hanson , Department of Psychology, Rutgers University "This thoroughly enjoyable little book on learning theory reminds me of many of classics in the field, such as Nilsson's *Learning Machines* or Minksy and Papert's *Perceptrons*: It is both a concise and timely tutorial 'projecting' the last decade of complex learning issues into simple and comprehensible forms and a vehicle for exciting new links between cognitive science, philosophy, and computational complexity."--Stephen J. Hanson, Department of Psychology, Rutgers University "In their interesting and stimulating book *Reliable Reasoning*, Harman, a philosopher, and Kulkarni, an information scientist, illuminate the philosophical issues related to inductive reasoning by studying it in terms of the mathematics of probabilistic learning. One of the great virtues of this approach is that the inductive inference made through learning can survive changes in the probabilistic modeling assumptions. I find that the authors have made a convincing and persuasive case for rigorously studying the philosophical issues related to inductive inference using recent ideas from the science of artificial intelligence."--Sanjoy K. Mitter, Professor of Electrical Engineering, MIT
Reseña del editor:
The implications for philosophy and cognitive science of developments in statistical learning theory.

„Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.

  • VerlagMIT Press
  • Erscheinungsdatum2012
  • ISBN 10 0262517345
  • ISBN 13 9780262517348
  • EinbandTapa blanda
  • Anzahl der Seiten118
  • Bewertung

(Keine Angebote verfügbar)

Buch Finden:



Kaufgesuch aufgeben

Sie kennen Autor und Titel des Buches und finden es trotzdem nicht auf ZVAB? Dann geben Sie einen Suchauftrag auf und wir informieren Sie automatisch, sobald das Buch verfügbar ist!

Kaufgesuch aufgeben

Weitere beliebte Ausgaben desselben Titels

9780262083607: Reliable Reasoning: Induction and Statistical Learning Theory (Jean Nicod Lectures)

Vorgestellte Ausgabe

ISBN 10:  0262083604 ISBN 13:  9780262083607
Verlag: Bradford Books, 2007
Hardcover

Beste Suchergebnisse beim ZVAB