Authors: Patrick Tucker
Neurotransmitters, and personality traits,
172
â74
New York City, predictive policing,
187
,
194
Nexus,
156
Ng, Andrew,
132
â34,
136
â40,
149
â50
Nieto, Enrique Peña,
196
â97
Norvig, Peter,
138
â39
Nothelfer, Christine E.,
100
Nuclear accidents, Fukushima Daiichi nuclear plant,
9
â12
Numenta,
226
Obama, Barack,
79
,
170
â71,
209
,
220
Olligschlaeger, Andreas,
184
â86,
188
,
191
O'Malley, Martin,
184
One Laptop per Child (OLPC) Association,
142
â47
One-to-one marketing at scale,
116
Online classes.
See
Education
Open Source Indicators (OSI),
197
â98
Operation Blue CRUSH (Crime Reduction Utilizing Statistical History),
190
â91
Operation SPOT,
204
Oroeco,
127
Osito,
xvii
Overfitting,
5
Owens, Emily G.,
192
Pacemakers, Bluetooth-enabled,
7
Pachube,
10
â12
Palantir Technologies,
218
â21
PalmPilot,
226
Pariser, Eli,
241
Parking Douche,
216
Path,
20
â21
Paul, Michael,
61
â65
Pearl, Judea,
23
Pentland, Alex “Sandy,”
167
â72,
174
,
182
Perry, Rick,
214
Personal data.
See also
Privacy issues
advertising use of,
106
â9
of consumers.
See
Consumers
data leakage,
20
â21
data resellers,
156
data trail, creating,
xv
health data sharing, pros/cons,
46
â48
self-tracking,
31
â37
Personality traits
based on brain chemistry,
172
â74
five-factor model,
173
Petterssen, Sverre,
71
Phillips, Norman,
74
Poindexter, John,
237
â38
Point-of-care tests (POCTs),
58
â59
Policing, predictive.
See
Predictive policing
Political demonstrations, prediction of,
196
â98
Polker players, visual cues,
169
â70
Post-traumatic stress disorder (PTSD),
180
Prediction
Bayes theorem,
23
â25
and big data,
xiii
âxiv,
181
â82
brain, systems modeled on,
227
â36
of consumer behavior,
120
â21
of crime, predictive policing,
183
â201
of earthquakes,
2
â4
of future illness,
45
â46
human patterns, predictability of,
28
â29
individual location predictability,
25
â30
influenza-related.
See
Flu detection
intelligence activities for,
196
â200
matchmaking/dating,
152
â76
of movie box-office success,
90
â99
and neural processes,
227
â36
of political demonstrations,
196
â98
recommendation engines,
87
â89,
97
â99
of workplace accidents,
176
â77
Predictive policing,
183
â201
abuses related to,
187
,
195
â96
broken-windows theory,
184
in China,
187
closed-circuit TV (CCTV),
194
â95
connection tracking system,
218
â21
drug dealing, vulnerable neighborhoods,
183
â86
evidence, crowd-sourcing,
213
â17
intelligence activities,
196
â200
mapping/geolocation,
185
â86,
191
meaning of,
186
mobile applications,
193
â94
neighborhood economic data for,
189
â92
neighborhood watch network,
213
â17
with neural networks,
185
â86
Project Exile,
187
â88
rule-induction algorithms in,
190
â91
ShotSpotter,
194
and victimology data,
223
versus zero-tolerance policies,
187
,
195
PRISM system,
210
Privacy issues
data leakage,
20
â21
employee monitoring,
177
and geo-social apps,
19
â22
government collected data,
220
â21
health data sharing, pros/cons,
46
â48
informational determinism concept,
241
matchmaking sites,
155
â56
neighborhood watch network,
215
â17
public knowledge, importance of,
212
â13,
221
â22,
238
â42
smartphone data, limiting,
29
Probability.
See also
Prediction
Bayes theorem,
23
â25
Procter & Gamble, radio frequency identification (RDIF) tag use,
115
â16
Product sales, drivers of,
106
Project Exile,
187
â88
ProMED-mail,
57
PubMatic,
156
Pythagoras,
49
â50
Q Sensor,
44
Quantified Self (QS),
32
â45.
See also
Self-tracking
elements of,
32
â33
Quantified Self Toronto,
33
â34
Quarantine, origin of term,
49
â50
Radio frequency identification (RDIF)
components of,
7
customer behavior tracking with,
115
â16
data trail, creating with,
xv
scope of use of,
6
â7
Ramakrishnan, Naren,
196
â98
Rebello, Sanjay,
138
Recommendations, Netflix,
87
â89,
97
â99
Reinstein, John,
204
Relationships
health, measurement device,
174
â75
longevity, factors in,
161
,
179
â81
marital communication,
178
â79
matchmaking.
See
Matchmaking/dating
stress test of,
179
â81
Rewards programs
airlines,
110
gambling casinos,
109
â13
grocery stores,
117
â18
Romney, Mitt,
170
â71
Rosin, Hanna,
189
Rudin, Cynthia,
14
Rule-induction algorithms,
190
â91
RunKeeper,
32
Saffron Technology,
236
â38
Salathe, Marcel,
59
â60
Sam's Club,
118
Sandia National Laboratories,
148
Satellite Sentinel Project (SSP),
199
Scientific method,
78
Scott, A. O.,
96
Search engines, Wolfram Alpha,
39
â40
Seismography, earthquake prediction,
2
â4
Self-tracking,
32
â45
biophysical tracking,
31
â33,
38
â39,
44
â45
devices to compile data,
42
â45
historical view,
34
â37
for lifestyle management,
43
personal conversations,
174
â75
for self-improvement,
33
â37,
40
â41
Semi-Automated Business Research Environment (SABRE),
110
Senior, Carl,
125
Sensors
to detect ammonia/explosives,
8
for eavesdropping,
8
environmental disaster information,
10
â14
radio frequency identification (RDIF),
6
â7
Sensory data, elements of,
xv
âxvi
Sentient City Survival Kit,
217
Serendipity,
163
â65
Serotonin-based personality,
172
â73
Shaker, Steven,
231
Shepard, Mark,
217
Shook, Robert,
111
ShotSpotter,
194
Silver, Nate,
4
Silverman, Lauren,
166
Singer, Natasha,
121
Singles in America survey,
173
â74
Slashdot,
160
Smartphones
advertisers, connecting to users,
119
â20
geo-social apps,
19
â22,
165
â66
as Internet of Things driver,
16
location data, limiting on,
29
location predictability based on,
25
â30
location-tracking of,
17
â20
neighborhood watch network,
213
â17
as shopping buddy,
117
Smith, Tracy,
31
Social networks.
See also
individual social media by name
connection tracking system,
219
â20
geo-social apps,
19
â22,
165
â66
online, and intelligence information,
198
Walmart, use of data,
126
â27
weak versus strong ties,
123
Sociometer, honest signals,
167
â72,
174
Socrates,
133
Sonar app,
19
Spacey, Kevin,
89
Speech pattern, mood prediction on,
44
Spencer, Roy,
68
â70
Stagg, James,
71
Status theory, and matchmaking services,
157
â58,
160
â61,
167
Stella, Frank,
103
Stereotype threat,
134
â36
Strauss, Lewis,
72
Stress
reactions, and health,
41
â42
test, of relationships,
179
â81
Supramap,
55
â57
Takafuji, Takeya,
162
â63
Target, big data used by,
xiv
Telemetry,
xiv
âxvi
Amazon reader-behavior analysis,
99
â100
meaning of,
xiv
âxv
Netflix recommendation engine,
87
â89
power and scope of,
xv
âxvi
Television, optimized TV,
89
Terrorism prevention.
See
Airport security; Government surveillance; Intelligence activities
Terrorist Identities Datamart Environment (TIDE),
220
Testosterone-based personality,
173
Tether, Anthony,
238
Texas Virtual Border Watch,
214
TexTrace,
7
Thampi, Arun,
21
Thiel, Peter,
218
Tinder,
166
Topol, Eric,
58
Total Information Awareness (TIA),
237
â38
Total Weather Insurance (TWI),
84
â85
Transportation Security Administration (TSA),
202
â7,
210
Traumatic events, as relationship stress test,
179
â81
Tupes, Ernest,
173
Turow, Joseph,
105
â6
Twitter
Ailment Topic Aspect Model (ATAM) study,
61
â67
cigarette smoking study,
108
â9
geo-social apps,
19
â22
Ubiquitous computing
as Internet of Things,
6
â17
Unconscious mind, honest signals,
167
â72
U.S. Census,
119
Vedic astrology, matchmaking in,
152
â53,
182
Verizon, advertisers, connecting to users,
119
â20
Verleysen, Michel,
18
Victimology,
223
Virus sequencing.
See
Flu detection
Viser, Lisa M.,
44
Visualization,
233
â34
Von Neumann, John,
72
â74
Wagner, Wolfgang,
68
â70
Walmart
average customer, profile of,
118