Buch, Englisch, 954 Seiten, Format (B × H): 161 mm x 240 mm, Gewicht: 1576 g
ISBN: 978-0-19-957413-1
Verlag: ACADEMIC
There is a need for integrated thinking about causality, probability and mechanisms in scientific methodology. Causality and probability are long-established central concepts in the sciences, with a corresponding philosophical literature examining their problems. On the other hand, the philosophical literature examining mechanisms is not long-established, and there is no clear idea of how mechanisms relate to causality and probability. But we need some idea if we
are to understand causal inference in the sciences: a panoply of disciplines, ranging from epidemiology to biology, from econometrics to physics, routinely make use of probability, statistics, theory and mechanisms to infer causal relationships.
These disciplines have developed very different methods, where causality and probability often seem to have different understandings, and where the mechanisms involved often look very different. This variegated situation raises the question of whether the different sciences are really using different concepts, or whether progress in understanding the tools of causal inference in some sciences can lead to progress in other sciences. The book tackles these questions as well as others concerning
the use of causality in the sciences.
Zielgruppe
Researchers in the sciences (to learn about the latest methods for, and controversies surrounding, causal inference), researchers in philosophy (to learn about new ideas on the nature of causality) and graduate students in philosophy and the sciences.
Autoren/Hrsg.
Fachgebiete
- Geisteswissenschaften Philosophie Wissenschaftstheorie, Wissenschaftsphilosophie
- Interdisziplinäres Wissenschaften Wissenschaften: Allgemeines Wissenschaften: Theorie, Epistemologie, Methodik
- Geisteswissenschaften Philosophie Metaphysik, Ontologie
- Geisteswissenschaften Philosophie Erkenntnistheorie
- Geisteswissenschaften Philosophie Philosophie der Mathematik, Philosophie der Physik
- Mathematik | Informatik Mathematik Mathematik Allgemein Philosophie der Mathematik
Weitere Infos & Material
PART I - Introduction
1: Phyllis McKay Illari, Federica Russo, Jon Williamson: Why look at Causality in the Sciences?
PART II - Health Sciences
2: R. Paul Thompson: Causality, Theories, and Medicine
3: Alex Broadbent: Inferring Causation in Epidemiology: Mechanisms, Black Boxes, and Contrasts
4: Harold Kinkaid: Causal Modeling, Mechanism, and Probability in Epidemiology
5: Bert Leuridan, Erik Weber: The IARC and Mechanistic Evidence
6: Donald Gillies: The Russo-Williamson Thesis and the Question of whether Smoking Causes Heart Disease
PART III - Psychology
7: David Lagnado: Causal Thinking
8: Benjamin Rottman, Woo-kyoung Ahn, Christian Luhmann: When and How Do People Reason about Unobserved Causes?
9: Clare R Walsh, Steven A Sloman: Counterfactual and Generative Accounts of Causal Attribution
10: Ken Aizawa, Carl Gillet: The Autonomy of Psychology in the Age of Neuroscience
11: Otto Lappi, Anna-Mari Rusanen: Turing Machines and Causal Mechanisms in Cognitive Science
12: Keith A. Markus: Real Causes and Ideal Manipulations: Pearl's Theory of Causal Inference from the Point of View of Psychological Research Methods
PART IV - Social Sciences
13: Daniel Little: Causal Mechanisms in the Social Realm
14: Ruth Groff: Getting Past Hume in the Philosophy of Social Science
15: Michel Mouchart, Federica Russo: Causal Explanation: Recursive Decompositions and Mechanisms
16: Kevin D. Hoover: Counterfactuals and Causal Structure
17: Damien Fennell: The Error Term and its Interpretation in Structural Models in Econometrics
18: Hossein Hassani, Anatoly Zhigljavsky, Kerry Patterson, Abdol S. Soofi: A Comprehensive Causality Test Based on the Singular Spectrum Analysis
PART V - Natural Sciences
19: Tudor M. Baetu: Mechanism Schemas and the Relationship Between Biological Theories
20: Roberta L. Millstein: Chances and Causes in Evolutionary Biology: How Many Chances Become One Chance
21: Sahotra Sarkar: Drift and the Causes of Evolution
22: Garrett Pendergraft: In Defense of a Causal Requirement on Explanation
23: Paolo Vineis, Aneire Khan, Flavio D'Abramo: Epistemological Issues Raised by Research on Climate Change
24: Giovanni Boniolo, Rossella Faraldo, Antonio Saggion: Explicating the Notion of 'Causation': the Role of the Extensive Quantities
25: Miklos Redei, Balazs Gyenis: Causal Completeness of Probability Theories-results and Open Problems
PART VI - Computer Science, Probability, and Statistics
26: Isabelle Guyon, C. Aliferis, G. Cooper, A. Elisseeff J.-P. Pellet, P. Spirtes, A. Statnikov: Causality Workbench
27: Jan Lemeire, Kris Steenhaut, Abdellah Touhafi: When are Graphical Models not Good Models
28: Dawn E. Holmes: Why Making Bayesian Networks Objectively Bayesian Make Sense
29: Branden Fitelson, Christopher Hitchcock: Probabilistic Measures of Causal Strength
30: Kevin B Korb, Erik P. Nyberg, Lucas Hope: A New Causal Power Theory
31: Samantha Kleinberg, Bud Mishra: Multiple Testing of Causal Hypotheses
32: Ricardo Silva: Measuring Latent Causal Structure
33: Judea Pearl: The Structural Theory of Causation
34: Sara Geneletti, A. Philip Dawid: Defining and Identifying the Effect of Treatment on the Treated
35: Nancy Cartwright: Predicting 'It Will Work for Us': (Way) Beyond Statistics
PART VII - Causality and Mechanisms
36: Stathis Psillos: The Idea of Mechanism
37: Stuart Glennan: Singular and General Causal Relations: A Mechanist Perspective
38: Phyllis McKay Illari, Jon Williamson: Mechanisms are Real and Local
39: Jim Bogen, Peter Machamer: Mechanistic Information and Causal Continuity
40: Phil Dowe: The Causal-Process-Model Theory of Mechanisms
41: M. Kuhlmann: Mechanisms in Dynamically Complex Systems
42: Julian Reiss: Third Time's a Charm: Causation, Science, and Wittgensteinian Pluralism
Index




