Causality
07 Dec 2008 15:15
There is unfortunately no accepted name for the scientific study of causality, and of methods for inferring it. "Etiology" suggests itself, but it's already taken...
Things I need to learn more about: Matched sampling methods; Granger causality (which seems like an extremely weak notion).
See also: Computational Mechanics; Graphical Models; Machine Learning, Statistical Inference, and Induction
- Recommended (current big picture):
- Clark Glymour
- The Mind's Arrows: Bayes Nets and Graphical Causal Models in Psychology [Mini-review]
- "What Went Wrong? Reflections on Science by Observation and The Bell Curve", Philosophy of Science 65 (1998): 1--32 [PDF reprint via Prof. Glymour]
- Judea Pearl, Causality: Models, Reasoning and Inference
- Donald B. Rubin and Richard P. Waterman, "Estimating the Causal Effects of Marketing Interventions Using Propensity Score Methodology", math.ST/0609201 = Statistical Science 21 (2006): 206--222 [A good description of Rubin et al.'s methods for causal inference, adapted to the meanest understanding. I list this here rather than under "more specialized" because Rubin and Waterman do a very good job of explaining, in a clear and concrete problem, just how and why the newer techniques of causal inference are valuable, with just enough technical detail that it doesn't seem like magic.]
- Peter Spirtes, Clark Glymour and Richard Scheines, Causation, Prediction and Search
- Christopher Winship
- Counterfactual Causal Analysis [Repository page with papers aimed at sociological applications]
- and Stephen L. Morgan, "Estimation of Causal Effects from Observational Data," Annual Review of Sociology 25 (1999): 659--706 [PDF reprint, large]
- and Michael Sobel, "Causal Inference in Sociological Studies" [PDF preprint]
- Recommended (historical):
- David Hume
- ibn Rushd (= Averroes), Tahafut al-Tahafut [Which, needless to say, I've only read in translation]
- Bertrand Russell
- The Analysis of Matter
- Human Knowledge
- Recommended (more specialized):
- David Galles and Judea Pearl
- Clark Glymour, "When Is a Brain Like the Planet?", Philosophy of Science 74 (2007): 330--347
- Clive Granger [His original paper on what has come to be called "Granger causality" is actually very interesting — I hadn't realized he got the idea from reading Norbert Wiener, but in retrospect that makes sense and explains why he formulated his test in the frequency domain — but I don't feel energetic enough right now to either find it in my filing cabinet or look up the exact citation.]
- Kevin T. Kelly and Conor Mayo-Wilson, "Causation, Retraction, Simplicity, and Truth" [Unpublished; thanks to Kevin for a preprint]
- Gustavo Lacerda, Peter Spirtes, Joseph Ramsey and Patrik O. Hoyer, "Discovering Cyclic Causal Models by using Independent Components Analysis" [PDF draft via Gustavo]
- Milan Palus and Aneta Stefanovska, "Direction of coupling from phases of interacting oscillators: An information-theoretic approach", Physical Review E 67 (2003): 055201 [Thanks to Prof. Palus for a reprint. This is a kind of information-theoretic generalization of Granger causality.]
- James M. Robins, Richard Scheines, Peter Spirtes and Larry Wasserman, "Uniform Consistency in Causal Inference" [CMU Statistics Tech Report 725, 2000]
- Wesley Salmon
- Scientific Explanation and the Causal Structure of the World
- Causality and Explanation
- Herbert Simon, "Causal Ordering and Identifiability"
- Halbert White and Karim Chalak, "A Unified Framework for Defining and Identifying Causal Effects" [Preprint of Jan. 30, 2006; thanks to D. R. White for letting me know about this paper and sending me a later version. Submitted to Econometrica]
- To read:
- Mickel Aickin, Causal Analysis in Biomedicine and Epidemiology: Based on Minimal Sufficient Causation
- Nicola Ancona, Daniele Marinazzo and Sebastiano Stramaglia, "Extending Granger causality to nonlinear systems", physics/0405009
- Nihat Ay, "A Refinement of the Common Cause Principle", SFI Working Paper 08-01-001 [PDF]
- Aron Barbey and Phillip Wolff, "Learning Causal Structure from Reasoning", phil-sci/3176
- Michael Baumgartner, "Inferring Causal Complexity", phil-sci/2879 [Identifying causal structures among Boolean variables, handling "both mutually dependent causes, i.e. causal chains, and multiple effects, i.e. epiphenomena"]
- Aaron P. Blaisdell, Kosuke Sawa, Kenneth J. Leising, and Michael R. Waldmann, "Causal Reasoning in Rats", Science 311 (2006): 1020--1022
- Blalock, Causal Inferences in Nonexperimental Research
- Hans-Peter Blossfeld and Gotz Rohwer, Techniques of Event-History Modeling: New Approach to Causal Analysis
- Nancy Cartwright, Hunting Causes and Using Them: Approaches in Philosophy and Economics [blurb. Extremely harsh critiques by Pearl and Glymour ("All of her critical claims are false or at best fractionally true")]
- Xiaohong Chen, Markus Reiss, "On rate optimality for ill-posed inverse problems in econometrics", arxiv:0709.2003 [Non-parametric instrumental variables]
- Yonghong Chen, Steven L. Bressler, and Mingzhou Ding, "Frequency decomposition of conditional Granger causality and application to multivariate neural field potential data", q-bio.NC/0608034 = Journal of Neuroscience Methods 150 (2006): 228--237
- Tianjiao Chu and Clark Glymour, "Search for Additive Nonlinear Time Series Causal Models", Journal of Machine Learning Research 9 (2008): 967--991
- John Collins, Ned Hall, L.A. Paul (eds.), Causation and Counterfactuals [Forthcoming]
- Daniel Commenges, Anne Gegout-Petit, "A general dynamical statistical model with possible causal interpretation", arxiv:0710.4396
- Rajeev H. Dehejia and Sadek Wahba, "Propensity Score-Matching Methods for Nonexperimental Causal Studies", The Review of Economics and Statistics 84 (2002): 151--161
- Mingzhou Ding, Yonghong Chen and Steve L. Bressler, "Granger Causality: Basic Theory and Application to Neuroscience", q-bio.QM/0608035 = pp. 451--474 in B. Schelter, M. Winterhalder, and J. Timmer (eds.), Handbook of Time Series Analysis
- Patrick Doreian, "Causality in Social Network Analysis", Sociological Methods and Research 30 (2001): 81--114
- Frederick Eberhardt and Richard Scheines, "Interventions and Causal Inference", phil-sci/2944
- Ellery Eells, Probabilistic Causality
- Michael Eichler, "Graphical modelling of multivariate time series", math.ST/0610654
- Adam Elga, "Isolation and Folk Physics", phi-sci/2678 [Ordinary notions of causality as approximations to real physics, under conditions of near-independence]
- Elena Erosheva, Emily W. Walton and David T. Takeuchi, "Self-Rated Health among Foreign- and U.S.-Born Asian Americans: A Test of Comparability", Medical Care 45 (2007): 80--87 [As an application of propensity-score matching to a multi-level response]
- Freedman, "On Specifying Graphical Models for Causation," UCB Stat. Tech. Rep. 601 [abstract, pdf]
- Galavotti (ed.), Stochastic Causality
- Clark Glymour, "Rabbit Hunting", Synthese 121 (1999): 55--78 [PDF reprint]
- Glymour and Cooper (eds.), Computation, Causation and Discovery
- Adam Glynn and Kevin Quinn, "Non-parametric Mechanisms and Causal Modeling" [PDF preprint]
- Jorge Goncalves and Sean Warnick, "Dynamical Structure Functions for the Estimation of LTI Networks with Limited Information", q-bio.MN/0610008 [LTI = "linear, time-invariant"]
- Sander Greenland, Judea pearl and James M. Robins, "Causal Diagrams for Epidemiologic Research", Epidemiology 10 (1999): 37--48 [PDF via Prof. Pearl]
- Joseph Y. Halpern and Judea Pearl, "Causes and Explanations: A Structural-Model Approach", "Part I: Causes", cs.AI/0011012, and "Part II: Explanations," cs.AI/0208034
- Joe Henson, "Comparing causality principles", Studies in History and Philosophy of Modern Physics 36 (2005): 519--543
- Kevin D. Hoover, Causality in Macroeconomics
- Kosuke Imai, Gary King and Elizabeth Stuart, "Misunderstandings among Experimentalists and Observationalists about Causal Inference" [PDF pre-print]
- Dominik Janzing, "On causally asymmetric versions of Occam's Razor and their relation to thermodynamics", arxiv:0708.3411
- David D. Jensen, Andrew S. Fast, Brian J. Taylor, Marc E. Maier, "Automatic Identification of Quasi-Experimental Designs for Discovering Causal Knowledge", SIGKDD 2008 [PDF reprint]
- Alon Keinan, Ben Sandbank, Claus C. Hilgetag, Isaac Meilijson and Eytan Ruppin, "Fair Attribution of Functional Contribution in Artificial and Biological Networks", Neural Computation 16 (2004): 1887--1915
- Manabu Kuroki, "Bounds on average causal effects in studies with a latent response variable", Metrika 61 (2005): 63--71
- Judith J. Lok
- "Mimicking counterfactual outcomes for the estimation of causal effects", math.ST/0409045
- "Statistical modelling of causal effects in continuous time", math.ST/0410271
- Daniele Marinazzo, Mario Pellicoro and Sebastiano Stramaglia, "Nonlinear parametric model for Granger causality of time series", Physical Review E 73 (2006): 066216 = cond-mat/0602183
- Vaughn R. McKim and Stephen P. Turner (ed.), Causality in Crisis? Statistical Methods and the Search for Causal Knowledge in the Social Sciences
- K. Mengersen, S. A. Moynihan, R. L. Tweedie, "Causality and Association: The Statistical and Legal Approaches", arxiv:0710.4459
- Peter Menzies, "A Structural Equations Account of Negative Causation", phil-sci/2962
- Morgan and Winship, Counterfactuals and Causal Inference: Methods and Principles for Social Research [blurb]
- John D. Norton, "Causation as Folk Science," phil-sci/1214
- Farid Nouioua, "Why did the accident happen? A norm-based reasoning approach", cs.AI/0610015
- L. A. (Laurie) Paul
- David T. Pegg, "Causality in quantum mechanics", Physics Letters A 349 (2006): 411--414
- Jean-Philippe Pellett and Andre Elisseeff, "Using Markov Blankets for Causal Structure Learning", Journal of Machine Learning Research 9 (2008): 1295--1342
- Huw Price and Richard Corry (eds.), Causation, Physics, and the Constitution of Reality: Russell's Republic Revisited
- Adam Przeworski, "Is the Science of Comparative Politics Possible?" [PDF preprint. On drawing causal conclusions from natural "quasi-experiments".]
- Miklós Rédei and Stephen J. Summers, "Remarks on Causality in Relativistic Quantum Field Theory", quant-ph/0302115
- Hans Reichenbach, The Direction of Time
- Eva Riccomagno, Jim Q. Smith
- "Algebraic causality: Bayes nets and beyond", arxiv:0709.3377
- "The causal manipulation of chain event graphs", 0709.3380
- Donald B. Rubin, Matched Sampling for Causal Effects [Blurb. Collection of papers by Rubin and collaborators. Haven't finished them all yet.]
- Anil K. Seth and Gerald M. Edelman, "Distinguishing Causal Interactions in Neural Populations", Neural Computation 19 (2007): 910--933
- Glenn Shafer, The Art of Causal Conjecture [Bought from an on-line bookstore which gave the title as The Art of Casual Conjecture; a book which should be written. Reviwed by Glymour (PDF)]
- Bill Shipley, Cause and Correlation in Biology: A User's Guide to Path Analysis, Structural Equations and Causal Inference [Author's book page; thanks to Bill Raynor for the link]
- Dan Sperber, David Premack and Ann James Premack (eds.), Causal Cognition: A Multidisciplinary Debate
- Patrick Suppes
- Patrick Suppes, Scientific Philosopher
- A Probabilistic Theory of Causality
- Representation and Invariance
- G. A. Svechnikov, Causality and the Relation of States in Physics
- P. F. Verdes, "Assessing causality from multivariate time series", Physical Review E 72 (2005): 026222
- Brad Weslake, "Common Causes and The Direction of Causation", phil-sci 2383
- Phillip Wolff, "Representing Causation", phil-sci/3177
- James Woodward, Making Things Happen: A Theory of Causal Explanation
- Jiji Zhang, "Causal Reasoning with Ancestral Graphs", Journal of Machine Learning Research 9 (2008): 1437--1474
- Zhang Jiji and Peter Spirtes, "Detection of Unfaithfulness and Robust Causal Inference", phil-sc/3188
- To write:
- CRS, "Causality in Models of Dynamics"
- CRS, "Homophily, Contagion, Confounding: Pick Any Three"
