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      Mercedes 125–6

      microprocessors x

      Millgarth 145, 146

      Mills, Tamara 101–2, 103

      MIT Technology Review 101

      modern inventions 2

      Moses, Robert 1

      movies see films

      music 176–80

      choosing 176–8

      diversity of charts 186

      emotion and 189

      genetic algorithms 191–2

      hip hop 186

      piano experiment 188–90

      algorithm 188, 189–91

      popularity 177, 178

      quality 179, 180

      terrible, success of 178–9

      Music Lab 176–7, 179, 180

      Musk, Elon 138

      MyHeritage 110

      National Geographic Genographic project 110

      National Highway Traffic Safety Administration 135

      Navlab 117

      Netflix 8, 188

      random forests 59

      neural networks 85–6, 95, 119, 202, 219–20n11

      driverless cars 117–18

      in facial recognition 166–7

      predicting performances of films 183

      New England Journal of Medicine 94

      New York City subway crime 147–50

      anti-social behaviour 149

      fare evasion 149

      hotspots 148, 149

      New York Police Department (NYPD) 172

      New York Times 116

      Newman, Paul 127–8, 130

      NHS (National Health Service)

      computer virus in hospitals 105

      data security record 105

      fax machines 103

      linking of healthcare records 102–3

      paper records 103

      prioritization of non-smokers for operations 106

      nuclear war 18–19

      Nun Study 90–2

      obesity 106

      OK Cupid 9

      Ontario 169–70

      openworm project 13

      Operation Lynx 145–7

      fingerprints 145

      overruling algorithms

      correctly 19–20

      incorrectly 20–1

      Oxbotica 127

      Palantir Technologies 31

      Paris Auto Show (2016) 124–5

      parole 54–5

      Burgess’s forecasting power 55–6

      violation of 55–6

      passport officers 161, 164

      PathAI 82

      pathologists 82

      vs algorithms 88

      breast cancer research on corpses 92–3

      correct diagnoses 83

      differences of opinion 83–4

      diagnosing cancerous tumours 90

      sensitivity and 88

      specificity and 88

      pathology 79, 82

      and biology 82–3

      patterns in data 79–81, 103, 108

      payday lenders 35

      personality traits 39

      advertising and 40–1

      inferred by algorithm 40

      research on 39–40

      Petrov, Stanislav 18–19

      piano experiment 188–90

      pigeons 79–80

      Pomerleau, Dean 118–19

      popularity 177, 178, 179, 183–4

      power 5–24

      blind faith in algorithms 13–16

      overruling algorithms 19–21

      struggle between humans and algorithms 20–4

      trusting algorithms 16–19

      power of veto 19

      Pratt, Gill 137

      precision in justice 53

      prediction

      accuracy of 66, 67, 68

      algorithms vs humans 22, 59–61, 62–5

      Burgess 55–6

      of crime

      burglary 150–1

      HunchLab algorithm 157–8

      PredPol algorithm 152–7, 158

      risk factor 152

      Strategic Subject List algorithm 158

      decision trees 56–8

      dementia 90–2

      development of abnormalities 87, 95

      homicide 62

      of personality 39–42

      of popularity 177, 178, 179, 180, 183–4

      powers of 92–6

      of pregnancy 29–30

      re-offending criminals 55–6

      recidivism 62, 63–4, 65

      of successful films 180–1, 182–3, 183

      superiority of algorithms 22 see also Clinical vs Statistical Prediction (Meehl); neural networks

      predictive text 190–1

      PredPol (PREDictive POLicing) 152–7, 158, 228–9n27

      assessing locations at risk 153–4

      cops on the dots 155–6

      fall in crime 156

      feedback loop 156–7

      vs humans, test 153–4

      target hardening 154–5

      pregnancy prediction 29–30

      prescriptive sentencing systems 53, 54

      prioritization algorithms 8

      prisons

      cost of incarceration 61

      Illinois 55, 56

      reduction in population 61

      privacy 170, 172

      false sense of 47

      issues 25

      medical records 105–7

      overriding of 107

      sale of data 36–9

      probabilistic inference 124, 127

      probability 8

      ProPublica 65–8, 70

      quality 179, 180

      ‘good’

      changing nature of 184

      defining 184

      quantifying 184–8

      difficulty of 184

      Washington Post experiment 185–6

      racial groups

      COMPAS algorithm 65–6

      rates of arrest 68

      radar 119–20

      RAND Corporation 158

      random forests technique 56–9

      rape 141, 142

      re-offending 54

      prediction of 55–6

      social types of inmates 55, 56

      recidivism 56, 62, 201

      rates 61

      risk scores 63–4, 65

      regulation of algorithms 173

      rehabilitation 55

      relationships 9

      Republican voters 41

      Rhode Island 61

      Rio de Janeiro–Galeão International Airport 132

      risk scores 63–4, 65

      Robinson, Nicholas 49, 50, 50–1, 77

      imprisonment 51

      Rossmo, Kim 142–3

      algorithm 145–7

      assessment of 146

      bomb factories 147

      buffer zone 144

      distance decay 144

      flexibility of 146

      stagnant water pools 146–7

      Operation Lynx 145–7

      Rotten Tomatoes website 181

      Royal Free NHS Trust 222–3n48

      contract with DeepMind 104–5

      access to full medical histories 104–5

      outrage at 104

      Rubin’s vase 211n13

      rule-based algorithms 10, 11, 85

      Rutherford, Adam 110

      Safari browser 47

      Sainsbury’s 27

      Salganik, Matthew 176–7, 178

      Schmidt, Eric 28

      School Sisters of Notre Dame 90, 91

      Science magazine 15

      Scunthorpe 2

      search engines 14–15

      experiment 14–15

      Kadoodle 15–16

      Semmelweis, Ignaz 81

      sensitivity, principle of 87, 87–8

      sensors 120

      sentencing

      algorithms for 62–4

      COMPAS 63, 64

      considerations for 62–3

      consistency in 51

      length of 62–3

      influencing 73

      Weber’s Law 74–5

      mitigating factors in 53

      prescriptive systems 53, 54

      serial offenders 144, 145

      serial rapists 141–2


      Sesame Credit 45–6, 168

      sexual attacks 141–2

      shoplifters 170

      shopping habits 28, 29, 31

      similarity 187

      Slash X (bar) 113, 114, 115

      smallpox inoculation 81

      Snowden, David 90–2

      social proof 177–8, 179

      Sorensen, Alan 178

      Soviet Union

      detection of enemy missiles 18

      protecting air space 18

      retaliatory action 19

      specificity, principle of 87, 87–8

      speech recognition algorithms 9

      Spotify 176, 188

      Spotify Discover 188

      Sreenivasan, Sameet 181–2

      Stammer, Neil 172

      Standford University 39–40

      STAT website 100

      statistics 143

      computational 12

      modern 107

      NYPD 172

      Stilgoe, Jack 128–9, 130

      Strategic Subject List 158

      subway crime see New York City subway crime

      supermarkets 26–8

      superstores 28–31

      Supreme Court of Wisconsin 64, 217n38

      swine flu 101–2

      Talley, Steve 159, 162, 163–4, 171, 230n47

      Target 28–31

      analysing unusual data patterns 28–9

      expectant mothers 28–9

      algorithm 29, 30

      coupons 29

      justification of policy 30

      teenage pregnancy incident 29–30

      target hardening 154–5

      teenage pregnancy 29–30

      Tencent YouTu Lab algorithm 169

      Tesco 26–8

      Clubcard 26, 27

      customers

      buying behaviour 26–7

      knowledge about 27

      loyalty of 26

      vouchers 27

      online shopping 27–8

      ‘My Favourites’ feature 27–8

      removal of revealing items 28

      Tesla 134, 135

      autopilot system 138

      full autonomy 138

      full self-driving hardware 138

      Thiel, Peter 31

      thinking, ways of 72

      Timberlake, Justin 175–6

      Timberlake, Justin (artist) 175–6

      Tolstoy, Leo 194

      TomTom sat-nav 13–14

      Toyota 137, 210n13

      chauffeur mode 139

      guardian mode 139

      trolley problem 125–6

      true positives 67

      Trump election campaign 41, 44

      trust 17–18

      tumours 90, 93–4

      Twain, Mark 193

      Twitter 36, 37, 40

      filtering 10

      Uber

      driverless cars 135

      human intervention 135

      uberPOOL 10

      United Kingdom (UK)

      database of facial images 168

      facial recognition algorithms 161

      genetic tests for Huntington’s disease 110

      United States of America (USA)

      database of facial images 168

      facial recognition algorithms 161

      life insurance stipulations 109

      linking of healthcare records 103

      University of California 152

      University of Cambridge

      research on personality traits 39–40

      and advertising 40–1

      algorithm 40

      personality predictions 40

      and Twitter 40

      University of Oregon 188–90

      University of Texas M. D. Anderson Cancer Center 99–100

      University of Washington 168

      unmanned vehicles see driverless cars

      URLs 37, 38

      US National Academy of Sciences 171

      Valenti, Jack 181

      Vanilla (band) 178–9

      The Verge 138

      Volvo 128

      Autonomous Emergency Braking system 139

      Volvo XC90 139–40

      voting 39–43

      Walmart 171

      Walt Disney 180

      Warhol, Andy 185

      Washington Post 185–6

      Waterhouse, Heidi 35

      Watson (IBM computer) 101, 106, 201

      Bayes’ theorem 122

      contesting Jeopardy 98–9

      medical genius 99

      diagnosis of leukaemia 100

      eradication of cancer 99

      grand promises 99

      motor neurone disease 100

      termination of contract 99–100

      patterns in data 103

      Watts, Duncan 176–7

      Waymo 129–30

      Waze 23

      Weber’s Law 74–5

      whistleblowers 42

      Williams, Pharrell 192–3

      Windows XP 105

      Wired 134

      World Fair (1939) 116

      Xing.com 37

      Zaghba, Youssef 172

      Zilly, Paul 63–4, 65

      Zuckerberg, Mark 2, 25

      ZX Spectrum ix

      About the Author

      Hannah Fry is an Associate Professor in the mathematics of cities at University College London. In her day job she uses mathematical models to study patterns in human behaviour, and has worked with governments, police forces, health analysts and supermarkets. Her TED talks have amassed millions of views and she has fronted television documentaries for the BBC and PBS; she also hosts the long-running science podcast The Curious Cases of Rutherford & Fry with the BBC.

      Also by Hannah Fry

      The Mathematics of Love

      (with Dr Thomas Oléron Evans)

      The Indisputable Existence of Santa Claus: the Mathematics of Christmas

      TRANSWORLD PUBLISHERS

      61–63 Uxbridge Road, London W5 5SA

      www.penguin.co.uk

      Transworld is part of the Penguin Random House group of companies whose addresses can be found at global.penguinrandomhouse.com

      First published in Great Britain in 2018 by Doubleday an imprint of Transworld Publishers

      Copyright © Hannah Fry Limited 2018

      Cover design by Geoffrey Dahl

      Hannah Fry has asserted her right under the Copyright, Designs and Patents Act 1988 to be identified as the author of this work.

      Every effort has been made to obtain the necessary permissions with reference to copyright material, both illustrative and quoted. We apologize for any omissions in this respect and will be pleased to make the appropriate acknowledgements in any future edition.

      A CIP catalogue record for this book is available from the British Library.

      Version 1.0 Epub ISBN 9781473544710

      ISBNs 9780857525246 (hb)

      9780857525253 (tpb)

      This ebook is copyright material and must not be copied, reproduced, transferred, distributed, leased, licensed or publicly performed or used in any way except as specifically permitted in writing by the publishers, as allowed under the terms and conditions under which it was purchased or as strictly permitted by applicable copyright law. Any unauthorized distribution or use of this text may be a direct infringement of the author’s and publisher’s rights and those responsible may be liable in law accordingly.

      1 3 5 7 9 10 8 6 4 2

      Power

      fn1 This is paraphrased from a comment made by the computer scientist and machine-learning pioneer Andrew Ng in a talk he gave in 2015. See Tech Events, ‘GPU Technology Conference 2015 day 3: What’s Next in Deep Learning’, YouTube, 20 Nov. 2015, https://www.youtube.com/watch?v=qP9TOX8T-kI.

      fn2 Simulating the brain of a worm is precisely the goal of the international science project OpenWorm. They’re hoping to artificially reproduce the network of 302 neurons found within the brain of the C. elegans worm. To put that into perspective, we humans have around 100,000,000,000 neurons. See OpenWorm website: http://openworm.org/.

      fn3 Intriguingly, a rare exception to the superiority of al
    gorithmic performance comes from a selection of studies conducted in the late 1950s and 1960s into the ‘diagnosis’ (their words, not mine) of homosexuality. In those examples, the human judgement made far better predictions, outperforming anything the algorithm could manage – suggesting there are some things so intrinsically human that data and mathematical formulae will always struggle to describe them.

      Data

      fn1 Adverts aren’t the only reason for cookies. They’re also used by websites to see if you’re logged in or not (to know if it’s safe to send through any sensitive information) and to see if you’re a returning visitor to a page (to trigger a price hike on an airline website, for instance, or email you a discount code on an online clothing store).

      fn2 That plugin, ironically called ‘The Web of Trust’, set out all this information clearly in black and white as part of the terms and conditions.

      fn3 That particular combination seems to imply that I’d post more stuff if I didn’t get so worried about how it’d go down.

      Justice

      fn1 Fun fact: ‘parole’ comes from the French parole, meaning ‘voice, spoken words’. It originated in its current form in the 1700s, when prisoners would be released if they gave their word that they would not return to crime: https://www.etymonline.com/word/parole.

      fn2 An outcome like this can happen even if you’re not explicitly using gender as a factor within the algorithm. As long as the prediction is based on factors that correlate with one group more than another (like a defendant’s history of violent crime), this kind of unfairness can arise.

      fn3 A ball at 10p would mean the bat was £1.10, making £1.20 in total.

      Medicine

      fn1 More on Bayes in the ‘Cars’ chapter.

      fn2 You can’t actually tell if someone is Viking or not, as my good friend the geneticist Adam Rutherford has informed me at length. I mostly put this in to wind him up. To understand the actual science behind why, read his book A Brief History of Everyone Who Ever Lived: The Stories in Our Genes (London: Weidenfeld & Nicolson, 2016).

      Cars

      fn1 Watson, the IBM machine discussed in the ‘Medicine’ chapter, makes extensive use of so-called Bayesian inference. See https://www.ibm.com/developerworks/library/os-ind-watson/.

      fn2 The eventual winner of the 2005 race, a team from Stanford University, was described rather neatly by the Stanford University mathematician Pesri Diaconis: ‘Every bolt of that car was Bayesian.’

      fn3 A number of different versions of the scenario have appeared across the press, from the New York Times to the Mail on Sunday: What if the pedestrian was a 90-year-old granny? What if it was a small child? What if the car contained a Nobel Prize winner? All have the same dilemma at the core.

      fn4 There are things you can do to tackle the issues that arise from limited practice. For instance, since the Air France crash, there is now an emphasis on training new pilots to fly the plane when autopilot fails, and on prompting all pilots to regularly switch autopilot off to maintain their skills.

     


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