Technically Wrong

Home > Other > Technically Wrong > Page 20
Technically Wrong Page 20

by Sara Wachter-Boettcher


  Costolo, Dick, 148

  Cramer, Jim, 158

  Creepingbear, Shane, 53–56

  Criado-Perez, Caroline, 156

  criminal justice

  and COMPAS, 119–121, 125–129, 136, 145

  predictive policing software, 102

  sentencing algorithms for, 10

  culture fit, 24–25, 25, 189

  curators, of Trending Facebook feature, 165–169, 172

  daily active users (DAUs) metric, 74, 97–98

  Daniels, Gilbert S., 39

  Dash, Anil, 9, 187

  data. See personal data; proxy data; training data

  data brokers, 101–104

  Data Detox Kit, 102–103

  DAUs (daily active users) metric, 74, 97–98

  default settings

  and “average” users, 38–39

  bias in, 35–38, 61

  and cultural norms, 198

  default effect, 34, 65

  defined, 34–35

  and Facebook, 108–109

  and gender of game avatars, 35–36

  and marginalized populations, 37, 66

  and Uber’s location tracking, 106, 108

  Delano, Maggie, 28–31, 33

  delight, 8, 79, 90, 93–94, 96

  democracy, and tech industry, 9–10, 149, 154, 165–166

  demographics, and development of personas, 45–47

  deportations, 195, 200

  design aesthetics, 143–144

  Design for Real Life (Meyer and Wachter-Boettcher), 40, 64, 96

  design teams

  and “average” users, 38–40, 44, 47

  and default settings, 34–35

  and delight, 94

  devaluing of women’s roles in, 21

  and diversity/performance correlation, 184–186

  and form fields, 49–51

  and Glow app, 30

  and ill-considered Twitter updates, 160

  and inattentional blindness, 95–97

  lack of diversity in, 11, 14, 16–17, 20, 28, 35

  and personas, 28, 32–33, 44

  and photo autotagging, 136

  software reflecting values of, 149–150

  and stress cases, 40–44, 90, 96

  and Year in Review Facebook feature, 5

  Deszö, Cristian, 186

  digital forms

  and collection of gender information, 62–66

  and cultural norms, 198

  definition of, 51–52

  demanding accountability in, 75

  microaggressions in, 70–73

  Nextdoor’s Crime and Safety report, 67–71, 71, 73–74

  and problems with personal names, 40, 52–59, 72, 75

  and racial bias, 50, 59–62

  and sexual abuse, 49–50

  and titles, 66–67, 71

  Disney, 158

  disruption, tech industry’s desire for, 8–9, 150, 184, 191–192

  diversity. See also gender bias; racial bias

  companies’ efforts to improve, 22–26, 182–184

  correlation with performance, 184–186

  in design teams, 11, 14, 16–17, 20, 28, 35

  and Facebook, 19, 21–22, 23–25

  and innovation, 186

  and Slack, 190–191

  tech industry’s lack of, 9, 11, 14, 16, 18–20, 116, 135–136, 150, 157–158, 169, 171–176, 182, 196

  and Twitter, 155–156

  Dorsey, Jack, 155–156

  edge cases, 38–40, 50, 137

  Electronic Frontier Foundation, 108

  The End of Average (Rose), 38–39

  engagement, as goal of interaction design, 74

  ethics

  at Facebook, 172

  and Gamergate, 157

  and meritocracy of tech, 176, 189

  and racial bias on Nextdoor, 74

  and tech products’ ethical blunders, 6, 13, 26, 199

  at Uber, 108, 180, 187, 191–192

  Etsy, 32–33, 32

  Eve by Glow app, 31, 31, 33

  Eveleth, Rose, 137

  Facebook

  and Americans’ online status, 2

  artificial intelligence feature, 171

  and cares about us metric, 97

  collection of gender information by, 63–66, 63, 64

  creators’ values and biases, 168–172

  and data brokers, 104

  default privacy settings, 108–109

  and fake news, 165–166, 199

  Friends Day feature, 84–85

  and gender of profile picture avatars, 36

  and the Hacker Way, 170–171

  and Halloween icons, 80

  and journalism industry, 199

  Moments feature, 85, 97

  News Feed feature, 144, 168–169

  On This Day feature, 83–84, 97

  and presidential election of 2016, 10

  problems with personal names, 53–59, 75

  and proxy data use, 112

  and selection of ads users see, 10

  Trending feature, 149, 165–169, 172

  and value of user data, 97

  What Facebook Thinks You Like browser extension, 103

  and workforce diversity, 19, 21–22, 23–25

  Year in Review feature, 4–6, 5, 79, 83

  facial-recognition software, 137

  Fairness, Accountability, and Transparency in Machine Learning (FAT/ML), 128

  fairness criteria, 127–128, 136

  Fake, Caterina, 171–172

  fake news stories, 10, 149, 165–166, 170, 199

  Ferguson, Missouri protests, 163, 166

  fertility, and menstrual tracking apps, 28–30, 33

  financial performance, and diversity, 186

  Fisher, Carrie, 148

  Flickr, 135, 155, 171

  forms. See digital forms

  Fowler, Susan, 177–180

  free speech, 154, 157, 164

  Friedler, Sorelle, 128, 136, 145–146

  Friends Day, 84–85

  Fugett, Dylan, 119–120

  Gamergate, 151, 154, 157

  Gates, Bill, 182

  gay people. See LGBTQ community

  gender bias. See also diversity

  and companies’ personal name policies, 54–59

  and default settings, 35–38

  devaluing of women’s roles, 20–21, 176

  in edge cases, 38

  and Etsy, 32–33

  and form field design, 50, 71

  and game avatars, 35–36

  and Google’s use of proxy data, 109–112

  in menstrual tracking apps, 28–33

  and meritocracy of tech, 173–176, 180

  and negging, 91–92

  and normalizing TV programming, 47–48

  and online abuse and harassment, 147–154, 156–160

  and Reddit, 161–163

  Slack’s lack of, 190–191

  and smartphone personal assistants, 6–7, 7, 36–37

  and startups’ venture capital, 175

  and team performance, 184, 186

  and tech educational pipeline, 21–26, 181–184

  in tech industry, 6–7, 7, 13–21

  and Twitter’s executive leadership, 157–158

  at Uber, 108, 177–181, 187–189

  and word-embedding systems, 138–140

  and Milo Yiannopoulos, 150–154, 157

  gender information, companies’ collection of, 62–66

  Ghostbusters II (film), 150–151

  GitHub, 175

  Gizmodo, 165–166, 169

  Glass Room installation, 101–102

  Global Positioning System (GPS), 105

  Glow app, 29–33, 30

  Gmail, and collection of gender information, 62

  Gonzalez-Cameron, Aimee, 72

  Google

  and algorithms, 123, 136, 144

  design aesthetic of, 143

  and pervasiveness of technology, 3

  and photo autotagging, 129
–130, 129, 130, 132–133, 135–138, 145

  photo memories feature, 85

  privacy policies of, 109

  purchase of YouTube, 2

  sexual harassment at, 178

  smartphones of, 6

  trustworthiness of, 142–143

  use of proxy data, 109–112

  and Word2vec, 138–142, 145

  and workforce diversity, 19–20

  Grace Hopper Celebration of Women in Computing, 22–23

  Grant, Heidi, 189

  Greenshpan, Moshe, 137

  Grey, Jacqui, 189

  Greyball scandal, 199

  Grey’s Anatomy (TV show), 47

  Groeger, Lena, 35

  the Hacker Way, 170–171

  Hampton Creek’s Just Mayo, 187

  harassment online, 59, 147–154, 156–164, 170

  hashtags, 156

  Hatzenbuehler, Mark L., 198

  Ho, Ed, 152

  Ho, Kevin, 30

  Hoffman, Kevin M., 87–88

  Holder, Eric, 178, 180

  Hon, Calvin, 77–78

  Hon, Dan, 77–78, 82

  Horseman, Emily, 73

  How to Get Away with Murder (TV show), 47

  Huffman, Steve, 161

  humor. See misplaced celebrations and humor

  Hunch app, 171

  Huston, Cate, 183

  identity

  and companies’ collection of personal data, 102

  and companies’ name policies, 55–59, 71

  and digital forms, 60–65, 71, 73, 75

  and edge cases, 137

  and Facebook’s use of proxy data, 113–114

  and lack of design team diversity, 196

  and stress cases, 38, 40

  Immigration and Customs Enforcement, 200

  inattentional blindness, 94–96

  innovation, and diversity, 186

  Instagram, 3

  interaction design, 52, 73–74

  In The Plex (Levy), 143

  iPhones, 2, 34, 105–108. See also smartphones

  Jeong, Sarah, 161–162, 164

  Jobs, Steve, 182

  Jones, Leslie, 151

  Jones, Tim, 108

  Joy, Erica, 17

  Kage, Earl, 134

  Kalanick, Travis, 178–179

  Kelly, Megyn, 166

  Kiefer Lee, Kate, 89–90

  Kills the Enemy, Robin, 54

  Kodak, 133–135

  Kramer, Adelaide, 153

  LaFrance, Adrienne, 36

  Lamont, Amélie, 17

  law enforcement

  and COMPAS, 119–121, 125–129, 136, 145

  predictive policing software for, 102

  Lee, Nancy, 19

  lesbian people. See LGBTQ community

  Levchin, Max, 30

  Levy, Stephen, 143

  LGBTQ community. See also marginalized populations

  and companies’ collection of gender information, 62–64

  and companies’ name policies, 54–55, 58

  and edge cases, 38

  and Etsy, 32–33

  importance of tech to, 195–197

  and normalizing TV programming, 48

  and same-sex marriage, 196–198

  and Milos Yiannopoulos, 153

  Lil Miss Hot Mess, 55

  location tracking, 105–108

  Lone Hill, Dana, 54

  McAdoo, Greg, 175

  McBride, Sarah, 175

  machine-learning products, 121, 128, 132, 135, 136, 140, 146

  Mack, Arien, 95

  McKesson, DeRay, 81

  Mad Money (TV show), 158

  MailChimp, 89–90

  marginalized populations

  and default settings, 37, 66

  and digital forms, 51, 61, 72, 75

  and digital products’ personal data collection, 116–117

  importance of tech to, 195–197

  market negging, and opt-ins, 91–92, 97

  Martin, Erik, 162–163

  Martin, Trayvon, 141

  Martinez, Chris, 30

  Maslow, Abraham, 3

  maternity policies, 16

  MAUs (monthly active users) metric, 74, 97–98

  May, Rob, 139

  Mayer, Marissa, 143

  Medium publishing platform, 87–88, 180

  menstrual cycle tracking apps, 28–33

  Mental Models (Young), 46

  meritocracy

  and ethics, 176, 189

  tech industry as, 173–177, 180

  Uber as, 180

  Messer, Madeline, 35, 37

  metadata from emails, 102

  Meyer, Eric, 4–5, 40, 64, 79, 82, 89, 96

  Meyer, Rebecca, 4–5, 5

  microaggressions, 70–73

  Microsoft, 6, 36–37

  Miley, Leslie, 158

  misplaced celebrations and humor, 78–85, 87–90, 114–115, 200

  Moments Facebook feature, 85, 97

  monoculture, tech industry as, 188–189

  monthly active users (MAUs) metric, 74, 97–98

  Mosseri, Adam, 168

  Mozilla, 102

  multiracial populations, and form field design, 60–62

  mystification of tech, 9, 11–12, 26, 143, 188, 191–193, 199

  National Public Radio (NPR), 1, 40–44

  National Security Agency (NSA), 102

  National Suicide Prevention Lifeline, 6

  Native Americans, Facebook’s rejection of names of, 53–57

  natural language processing, 138

  negging, 91–92, 97

  Neighbors for Racial Justice, 69

  Netflix, 144

  neural networks, 131–133, 138

  News Feed Facebook feature, 144, 168–169

  Nextdoor app, 67–71, 71, 73–75

  Noble, Safiya, 10, 113

  non-binary people. See LGBTQ community

  Northpointe, 120, 125–127

  Note to Self podcast, 130, 171

  Nye, Bill, 1

  Ohanian, Alexis, 161, 164

  O’Neil, Cathy, 112, 126

  online time, growth of Americans, 1–3

  On This Day Facebook feature, 83–84, 97

  opt-in pop-ups, 90–92, 97

  oversight, tech industry’s desire to avoid, 187–189, 199

  Page, Shirley, 133

  Palantir, 199–200

  Pancake, Beth, 57

  Pao, Ellen, 162

  Parker, Bernard, 119–120

  PayPal, 175

  Penny, Laurie, 153

  personal data

  and algorithmic systems, 145

  collected during mobile usage, 116–117

  and data brokers, 101–104

  digital products designed to collect, 105–117

  tech industry’s responsibility for, 146

  value of, 96–98

  personalization of online content, 86–90, 99

  personal names, digital forms’ problems with, 40, 52–59, 71–72, 75

  personas, 27–33, 29, 44–47, 110

  Phillips, Katherine W., 184–186

  photo autotagging, 129–130, 129, 130, 132–133, 135–138, 145

  pickup artist (PUA) community, 91–92

  Pinterest, 42

  political bias, and Trending Facebook feature, 165–167, 169

  Practical Empathy (Young), 46

  privacy

  and digital products’ collection of personal data, 115, 117

  and Facebook, 108–109

  and Google, 109

  and Uber, 107–108

  ProPublica, 103, 112–113, 120, 126–127

  proxy data, 109–114

  PUA (pickup artist) community, 91–92

  PureGym, 6

  push notifications, 198

  Quantified Self movement, 28

  queer people. See LGBTQ community

  Quinn, Zoe, 157

  racial bias. See also diversity

  and COMPAS, 120, 125–129, 136

  and default se
ttings, 37, 61

  and facial-recognition software, 137

  and form field design, 50, 59–62

  and Google’s photo autotagging, 129–130, 129, 130, 132–133, 135–138

  and meritocracy of tech, 173–174, 176, 180

  as microaggressions, 72–73

  and Nextdoor’s Crime and Safety report, 68–71, 71, 73–74

  and normalizing TV programming, 47–48

  and personas, 45–46

  and photographic technology, 133–135

  and proxy data, 112–113

  and Reddit, 161–163

  and team performance, 184–186

  and tech educational pipeline, 21–26, 181–184

  in tech industry, 13, 17–18, 20, 200

  on Twitter, 151, 154

  and Twitter’s executive leadership, 157–158

  and word-embedding systems, 141

  rape, and smartphone personal assistants, 6–7, 7

  recruiting, 23–26

  Reddit, 149–150, 160–164, 166

  regulation, tech industry’s desire to avoid, 187–189, 199

  Relman, John, 112

  retweets, 156

  Rhimes, Shonda, 47–48

  Rock, David, 189

  Rock, Irvin, 95

  Roof, Dylann, 141–142

  Rooney, Mickey, 7, 8

  Rooney, Sally, 85–86, 98

  Rose, Todd, 38–39, 47

  Ross, David, 186

  Roth, Lorna, 134

  Sacks, David, 175

  Salesforce, 158

  same-sex marriage, 196–198

  Samsung, 6, 36

  Sandberg, Sheryl, 23

  Sankin, Aaron, 163

  Sarkeesian, Anita, 157

  Savage, Tag, 98

  Scandal (TV show), 47

  Seamless app, 114

  search engines, 10, 138, 141–142. See also specific search engines

  Selby, Louise, 6, 66

  Sequoia Capital, 175

  sexism. See gender bias

  sexual abuse, and form fields,

  49–50

  “Shirley Cards,” 133, 134

  Shrill (West), 149

  Silicon Valley. See tech industry

  Silicon Valley (TV show), 8–9

  Singhal, Amit, 178

  Siri

  failure to understand crises, 6–7, 7

  female voice of, 36

  teasing humor of, 88–89

  Sister Roma, 55

  Slack app, 2, 189–191

  Slate, 5, 61, 168

  smartphones

  and gender bias, 6–7, 7, 36–37

  screen size limitations of, 42

  and Uber’s location tracking, 105–108

  use of by marginalized populations, 116–117

  Snapchat, 7–8, 8, 37

  South by Southwest Interactive conference, 155

  Sparapani, Grace, 8

  Spotify, 62

  Srebro, Nathan, 127

  startups, 16–17, 27, 98, 107, 174–175, 192

  Steinem, Gloria, 66

  Sterling, Alton, 81

  stress cases, 38, 40–44, 90, 96

  subreddits, 149, 160–164

  suicide, 6–7, 197–198

  Sweeney, Miriam E., 142

  Tactical Technology Collective, 102

 

‹ Prev