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The Theory That Would Not Die

Page 40

by Sharon Bertsch McGrayne


  Pouget A et al. (2009) Neural Computations as Laplacian (or is it Bayesian?) probabilistic inference. In draft.

  Quatse JT, Najmi A. (2007) Empirical Bayesian targeting. Proceedings, 2007 World Congress in Computer Science, Computer Engineering, and Applied Computing, June 25–28, 2007.

  Schafer JB, Konstan J, Riedl J. (1999) Recommender systems in E-commerce. In ACM Conference on Electronic Commerce (EC-99) 158–66.

  Schafer JB, Konstan J, Riedl J. (2001) Recommender systems in E-commerce. Data Mining and Knowledge Discovery (5) 115–53.

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  Spolsky, Joel. (2005) (http://www.joelonsoftware.com/items/2005/10/17.html). Swinburne, Richard, ed. (2002) Bayes’s Theorem. Oxford University Press.

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  Unwin, Stephen D. (2003) The Probability of God: A Simple Calculation that Proves the Ultimate Proof. Random House.

  Wade, Paul R. (1999) A comparison of statistical methods for fitting population models to data. In Marine Mammal Survey and Assessment Methods, eds., Garner et al. Rotterdam: AA Balkema.

  ———. (2000) Bayesian methods in conservation biology. Conservation Biology (14) 1308–16.

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  Wolpert DM, Ghahramani Z. (2005) Bayes’ rule in perception, action, and cognition. In The Oxford Companion to the Mind, ed., Gregory RL. Oxford Reference OnLine.

  Wolpert DM. (December 8, 2005) The puppet master: How the brain controls the body. Francis Crick Lecture, Royal Society. Online.

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  Appendixes

  Campbell, Michael J. (2008) The doctor sees the light. Significance (5:4) 172.

  Frith, Chris. (2007) Making Up The Mind: How the Brain Creates our Mental World. Blackwell.

  Elmore Joann G et al. (April 16, 1998) Ten-year risk of false positive screening mammograms and clinical breast examinations. New England Journal of Medicine (338:16) 1089–96.

  Kerlikowske Karla et al. (November 24, 1993) Positive predictive value of screening mammography by age and family history of breast cancer. JAMA (270: 20) 2444–50.

  Kolata, Gina (November 23, 2009) Behind cancer guidelines, quest for data. New York Times.

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  Weaver DL et al. (2006) Pathologic findings from the Breast Cancer Surveillance Consortium: population-based outcomes in women undergoing biopsy after screening mammography. Cancer (106) 732. Cited in Fletcher, Suzanne W. (2010) Screening for breast cancer. www.uptodate.com

  index

  Abelson, Robert, 168

  accidents.

  See safety

  acquired immune deficiency syndrome, 216, 227

  Adair, Douglass, 159

  air quality, 215–16

  Alexander, Hugh, 71, 82, 83

  American Statistical Association, 117, 135

  American Telephone and Telegraph Company, x, 40–42, 243–44

  Anderson, John R., 247–48

  Andrews, Frank A., 187–190, 193, 197–200, 202

  Andrews, Harry C., 218

  Anscombe, Frank R., 166, 169, 173

  anti-Semitism, 143–44

  Aoki, Masanao, 205,

  Aronson, Gerald J., 126–27

  arifical intelligence, 81, 250–51

  artillary 28, 29, 38, 63, 72–73, 80, 116

  asteroids 209,

  astronomy 14, 16–18, 19, 21, 28, 32–33, 36–37,

  AT&T Labs, 243–44

  Automatic Target Recognition (ATM),241

  automobile insurance, 95

  averages, 130–32

  Bailey Arthur L., 91–96, 120, 125,131

  Bailey, Helen, 91

  Bailey, Robert A., 95

  Bailey, William O., 174

  Banburismus 66–72, 75, 80

  Barnard George A., 69, 132

  Barnett, Otto, 135

  Bayes, Thomas: Bayes’ rule discovered by, ix, 3, 6–10, 22, 130

  in dictionary, 215, 225

  life and death of, 3–5

  portrait of, 259

  life and death date of, 259

  Bayes’ Factor,116

  Bayesian inference, 129–30.

  See also inverse probability

  Bayes’ rule: abandonment of, 9–10, 11, 12, 37–38, 40, 61, 86–88, 176, 213

  acceptance of, ix, xi, 3, 45–46, 107, 134–36, 161–62, 175, 181, 203, 216–17, 221–22, 224–25, 232, 233–35, 250–51

  Bayes’ Factor, 116

  Bayesian inference, 129–30

  belief in, ix, xi, 8, 11, 233–34

  cause-and-effect and, 5–6, 11

  computation and, 134, 139–40, 159–61, 177–78, 195

  disagreement about, ix, x–xi, 3, 8–9, 35–38, 57, 105–6, 129–36, 176–78

  discovery of, ix–x, 3, 6–10, 20–22, 23, 31–32, 129–30, 142, 143, 176

  empirical Bayes, 129, 134

  equal probabilities in, 8–9, 21, 22, 23, 36–37, 87

  experience in, ix, xi, 6–9, 11

  frequentism compared empirically, 157–58, 159–61

  data in, ix, xi, 6–9, 11, 23, 53–54, 156, 234

  institutional support for, 134–35, 177, 178, 213–14, 220, 221–22, 224–25

  integration of functions in, 134

  inverse probability in, 6–10, 11

  likelihood in, 8

  name of, ix–x, 11, 12, 32, 36

  objectivity and, ix, x, 8, 11

  as philosophy, 3, 97, 105–6, 116–17, 123, 147–48, 253–54

  posteriors in, 8

  practical applications for, generally, 139–40, 209

  priors in, 8, 31–32, 87, 139

  probability in, 6–9, 11, 233–34

  publications of, 9–11, 12, 20, 22, 93, 110

  secrecy about, 3, 42, 83–86, 168–69, 170–71, 173, 213, 224

  statements of, ix, 8, 11–12, 20, 23, 31–32, 41

  subjectivity and, ix, x, 8

  terminology of, 8

  uncertainty and, xi, 8

  unified approach and, 170

  varieties of, 129:

  belief: in Bayes’rule, generally, ix, xi, 8,11, 233–34

  insurance and, 93

  probability and, 36, 51–52, 156, 233–34.

  See also intuition

  subjectivity

  Bell, E. T., 34

  Bell, Robert M., 243–44

  Bell, Laboratories, 40, 67, 76–77

  Bell, telephone systems, x, 40–42

  Berger, James O., 56, 177, 178, 236

  Barkely, George, 4

  Berkson, Joseph, 112

  Bernardo, José M., 220

  Bernoulli, Jakob, 121

  Berthollet, Claude, 30

  Bertillon, Alphonse, 38–39

  Bertrand, Joseph Louis François, 38, 73

  Besag, Julian, 218 biology.

  See genetic science

  medicine

  Birch, Frank, 66, 70

  Birnbaum, Allan, 132

  Blackwell, David, 88, 232

  Bletchley Park, 65–66, 71–72, 73–74, 82, 83–84.

  See also Enigma code<
br />
  Blinder, Alan S., 237

  blood pressure, 115–16

  Blunt, Anthony, 85, 86

  bombes, 65–67, 70–72, 74, 75–76, 80

  Borel, Émile, 51–52, 67, 103

  Bouvard, Alexis, 32

  Box, George E. P., 51, 130–34, 169, 176, 177

  brain, xi, 248–51

  Bretthorst, Larry, 227

  Brezhnev, Leonid, 196–97

  Brillinger, David R., 168, 170, 172, 173, 174

  Brinkley, David, 163

  Brown, Emery N., 248–49

  Brown, Gordon, 86

  Brown, Peter F., 237, 245–47

  Brown, Tommy, 75

  Buchanan, Chester L., 198, 201, 202

  Bucy, Richard, 205

  BUGS, 226, 228, 229

  Bühlmann, Hans, 96

  Burgess, Guy, 85, 86

  business, 140, 141–43, 145–53, 168, 176–77, 243–44.

  See also economics

  insurance

  Campbell, George Ashley, 40

  cancer, x, 108–9, 110–16, 227–28, 235, 255–57

  Canton, John, 5

  capital punishment, 28

  Casella, George, 224

  Cassels, Ian, 82

  casualty insurance, 3, 91–96

  cause-and-effect, 5–6, 9, 10–11, 19–21, 35

  census, 27, 173

  Central Intelligence Agency, 127, 135, 136

  central limit theorem, 21, 30–31

  Challenger, x, 103, 215

  change points, 216–17

  Chernoff, Herman, 177–78

  cholesterol, x, 115–16

  Chomsky, Noam, 245

  Chrystal, George, 37–38

  Churchill, Winston, 61, 71–72, 76, 83–84

  Clairaut, Alexis Claude, 14

  Clancy, Tom, 196

  classification problems, 155, 242–43

  Clayton, David, 221, 226

  Clippy, 243

  coal mines, 216–17

  Cochran, William, 146

  Cognitive Tutors, 247–48

  Cold War: cryptography and, 83–84

  military in, 215

  nuclear weapons and, x, 3, 119–20, 124

  Tukey in, 164–66, 173–75

  Coleman, James, 146

  Colossi, 74, 80–82, 83–84

  communications, x, 40–42, 76–77

  computation: Bayes’ rule and, generally, 139–40, 177–78

  business and, 148–49

  computers and, 177–78, 195, 199–200, 213–15, 219–26, 233, 234, 250–51

  dimensionality and, 213–15

  frequentism and, 214, 225

  hierarchies and, 214–15

  integration of functions and, 134

  computer languages, xi, 160

  computers: as brains, 250–51

  Colossi, 74, 80–82, 83–84

  computation and, 140, 177–78, 195, 199–200, 213–15, 219–26, 233, 234, 250–51

  development of, 84–85, 99

  The Federalist papers and, 157, 159–60

  data and, 234, 242, 250–51

  languages for, xi, 160

  Markov chains and, 221–26

  in medicine, 135

  priors and, 242, 243–44

  by Radio Corporation of America, 163, 167, 172, 173

  at RAND Corporation, 125

  search and, 197, 199–200

  software for, 226, 228, 229, 242–45, 247–48

  statistics and, 167, 225

  uncertainty and, 234

  computer software, 226, 228, 229, 242–45, 247–48

  Condorcet, Marquis de, 18, 23, 27, 29, 37

  conjugate priors, 125, 148, 149

  Cook, James, 18

  Coolidge, Julian L., 46

  Copernicus, Nicolaus, 16

  Cornfield, Jerome: 108–118, 154, 166, 168, 174

  Cournot, Antoine-Augustin, 121

  Cox, Gertrude, 88

  Craven, John Piña: 183–88, 191–203

  Credibility, 44–45, 94–96

  Cromwell’s Rule, 123

  cryptography, 73–74, 99–100, 135–36, 164–65, 173–75, 245.

  See also Enigma code

  Curie, Marie, 51

  curse of high dimensionality, 214

  Dale, Andrew I., 8

  d’Alembert, Jean Le Rond, 15–19

  Darwin, Charles Galton, 85

  Darwin, Leonard, 47

  data: in astronomy, 17–18, 19, 21

  in Bayes’ rule, generally, ix, xi, 6–9, 11, 23, 53–54, 156, 234

  brains and, 248–50

  business and, 142, 147–48

  in communications, 76–77

  computers and, 234, 242, 250–51

  election results and, 171, 172, 173

  finance and, 237–38

  gender and, 26

  insurance and, 93

  inverse probability and, 36, 53–54

  Laplace and, 17–18, 24

  likelihood principle and, 104, 132

  in mathematics, 19

  objectivity and, 103

  probability and, 36, 50, 55–56

  quantities of, 67, 77

  search for, 246, 247

  speech recognition and, 246

  in statistics, 49–50, 103, 167

  subjectivity and, 103

  telephone systems and, 39

  David, Florence Nightingale, 34–35

  Dawid, A. Philip, 214, 239

  de Buffon, Comte, 25

  decision theory, 57–58, 236–37

  decision trees, 148–49, 180

  de Finetti, Bruno: influence of, 103, 148

  insurance and, 95–96

  Lindley on, 57

  Nobel Prize and, 236

  prediction by, 178

  probability and, 233–34

  publication by, 87, 220

  subjectivity and, 52, 58, 67–68

  DeGroot, Morris H., 134, 220

  Delambre, Jean-Baptiste, 29

  Deming, W. Edwards, 110, 130, 176

  de Moivre, Abraham, 6, 19

  de Morgan, Augustus, 34

  Dempster, Arthur P., 221

  Denniston, Alastair G., 70

  Dewey, Thomas, 154

  Diaconis, Persi, 159, 161, 178, 219, 232, 240, 251

  dictionary, 215, 225

  diesel engines, 215–16

  Digital Sandbox, 241

  dimensionality, 213–15

  Discenza, Joseph H., 204

  disease. See medicine

  DNA. See genetic science

  Dodds, Harry W., 154

  Doeblin, Wolfgang, 64

  Doenitz, Karl, 69

  Doll, Richard, 109, 111, 112

  Dreyfus, Alfred, x, 3, 38–39

  Driscoll, Agnes Meyer, 75

  Dulles, John Foster, 154

  DuMouchel, William H., 215–16

  Earth, x, 54

  earthquakes, x, 54–58, 164

  e-commerce, xi, 243–44

  economics, 135, 236–38.

  See also business education, 4, 13–14, 158–59, 165–66, 247–48

  Edwards, Ward, 133

  Efron, Bradley, 178, 234

  Eisenhower, Dwight, 81, 119, 179

  elections, x, 154, 163–64, 166–73, 174–75

  e-mail, xi, 242–43, 244–45

  empirical Bayes, 129, 134

  Encyclopaedia Britannica, 34, 40

  Encyclopédie, 15

  Enigma code: Banburismus and, 66–72, 75, 80

  Bayes’ rule applied to, x, 3, 66–69, 73–74, 75–76

  bombes and, 65–67, 70–72, 74, 75–76, 80

  breaking of, x, 3, 75, 80

  codebooks for, 70–71, 75

  development of, 62–63

  hypotheses and, 66–68, 75–76

  inverse probability and, 68–69

  mathematics and, 62, 63

  operation of, 62, 70

  probability and, 66–67

  after Second World War, 83–84, 100–101

  subjectivit
y and, 67–68

  Tukey works on, 174

  Turing works on, x, 3, 65–72, 74, 75–77

  U-boats and, 61–62, 65–66, 69–70, 71, 74–75, 77, 80, 84.

  See also JN-25 code

  Tunny-Lorenz codes

  epidemiology, 108–18, 215–16

  equal probabilities: astronomy and, 36–37

  in Bayes’ rule, generally, 8–9, 21, 22, 23, 36–37, 87

  cryptography and, 99–100

  The Federalist papers and, 157, 161

  Fisher and, 48, 133–34

  gender and, 25

  military and, 38, 73, 241

  statistics and, 50

  Essen-Möller, Erik, 52–53

  Estienne, Jean Baptiste Eugène, 39–40

  eugenics, 45–48

  experience, ix, xi, 5, 6–9, 11

  experimental design, 117

  expert opinion, 149–50, 179, 185–86

  exploratory data analysis, 170

  Fasson, Anthony, 75

  federal government, 110–11.

  See also individual agencies

  The Federalist papers, 3, 155–58, 159–61, 243

  Federal Reserve, 236–37

  Feldstein, Martin, 236–37

  Fermi, Enrico, 102, 176, 222

  Feynman, Richard, 102–3

  fiducial probability, 132, 133, 170

  Fienberg, Stephen, 165, 168

  filters, xi, 205, 225, 240–41, 242–45, 248–49

  finance. See economics

  First World War, 39–40, 62

  Fisher, Ronald Aylmer: cancer and, 112–13, 116

  equal probabilities and, 133–34

  fiducial probability and, 132, 133

  frequentism and, generally, 45, 46–48, 49–51, 53–54, 234

  at Graduate School, 110

  on impossibility, 121

  influence of, 87–88, 92, 94, 141, 147, 178

  intuition and, 101

  Jeffreys and, 55–58

  likelihood principle of, 47, 53, 92, 233

  Lindley and, 133

  Neyman and, 98–99

  nuclear weapons and, 121

  priors and, 129

  Second World War and, 64

  Tukey and, 169–70

  fisheries, 209, 230–31

  Fleming, Ian, 70–71

  Flowers, Thomas H., 81, 82

  Food and Drug Administration, 228–29

  forensic science, 235–36

  Fox, Robert, 35

  Franco, Francisco, 190, 194

  French Revolution, 29, 35–36

  frequentism: Bayes’ rule accepted in, 233–34

  Bayes’ rule compared empirically, 157–58, 159–61

  business and, 141, 142

  change points and, 216–17

  computation and, 214, 225

  Cornfield and, 116–17

  decision theory and, 236

  dimensionality and, 214

  expert opinion and, 179

  The Federalist papers and, 157–58, 159–61

 

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