Title: PowerPoint Presentation Lecture
1 surveillance fdm 20c introduction to digital
media lecture 14.02.2006
warren sack / film digital media department /
university of california, santa cruz
2last time
3outline
- history of and surveillance today
- review of the capture model
- definition of privacy
- private versus public
- civil versus economic
- capture
- efficient connections versus resistances
- on the virtue of inefficiencies
- lessig on monitoring and search
- example monitoring on the web
- example search on the web
- gandy on data mining
4surveillance
- close watch kept over someone or something
- Etymology French, from surveiller to watch over,
from sur- veiller to watch, from Latin
vigilare, from vigil watchful
5panopticon (1791)
6panopticon (1791)
7claude-nicolas ledouxs salt plant at
arc-et-senans (1779)
8salt plant at arc-et-senans (1779)
9surveillance as a dream of the 18th enlightenment
- Michel Foucault I would say that Bentham was
the complement of Rousseau. What in fact was the
Rousseauist dream that motivated many of the
revolutionaries? It was the dream of a
transparent society, visible and legible in each
of its parts, the dream of there no longer
existing any zones of darkness, zones established
by the privledges of royal power or the
prerogatives of some corporation. - the eye of power, a conversation with jean-pierre
barou and michelle perrot
10but...
- They that can give up essential liberty to
obtain a little temporary safety deserve neither
liberty nor safety. - Benjamin Franklin, 1759 Historical Review of
Pennsylvania
11surveillance today
- some artists and art groups concerned with
surveillance - see the zkm show, ctrl space, 2001, curated by
thomas y. levin - surveillance camera players
- http//www.notbored.org/the-scp.html
- institute for applied autonomy
- http//www.appliedautonomy.com/isee/info.htm
- julia scher
- steve mann
- http//www.eyetap.org/wearcam/shootingback/
12technologies of surveillance
- example viisage superbowl XXXV
- the company www.viisage.com
- the technology eigenfaces
- white.media.mit.edu/vismod/demos/facerec/basic.htm
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13from surveillance to dataveillance
- dataveillance/spying
- carnavor
- echelon
- total information awareness agency
- now the terrorism information awareness project
- name change as of may 21, 2003 to mollify
congress worries about intrusion of the privacy
of u.s. citizens - headed by convicted felon (former admiral) john
poindexter - http//www.darpa.mil/darpatech2002/presentations/i
ao_pdf/slides/poindexteriao.pdf - officially ended in september 2003, but see
electronic frontier foundations update
http//www.eff.org/Privacy/TIA/
14patriot act and post 9/11
- aclus analysis
- see http//www.aclu.org/SafeandFree/SafeandFree.cf
m?ID11813c207 - new powers of surveillance, search and seizure
- threat to the first, fourth, fifth, sixth, eighth
and fourteenth amendments of the U.S. Constitution
15surveillance model versus capture model
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- surveillance model is built upon visual
metaphors and derives from historical experiences
of secret police surveillance - capture model is built upon linguistic metaphors
and takes as its prototype the deliberate
reorganization of industrial work activities to
allow computers to track them the work
activities in real time - agre, p. 740
16capture (in comparison with surveillance)
- linguistic metaphors (e.g., grammars of action)
- instrumentation and reorganization of existing
activities - captured activity is assembled from standardized
parts from an institutional setting - decentralized and hetrogeneous organization
- the driving aims are not necessarily political,
but philosophical/market driven
17taylorism, fordism and grammars of action
ford assembly line circa 1925
18privacy a definition
- 1.
- a. the quality or state of being apart from
company or observation - b. SECLUSION freedom from unauthorized intrusion
ltone's right to privacygt - 2. archaic a place of seclusion
- source Merriam Webster
19privacy a culturally specific definition
- Does the U.S. Bill of Rights define an
individuals right to privacy? - Not explicitly, but...
- inferrably e.g., Amendment IV The right of the
people to be secure in their persons, houses,
papers, and effects, against unreasonable
searches and seizures, shall not be violated, and
no Warrants shall issue, but upon probable cause,
supported by Oath or affirmation, and
particularly describing the place to be searched,
and the persons or things to be seized. - implicitly e.g., Amendment IX The enumeration
in the Constitution, of certain rights, shall not
be construed to deny or disparage others retained
by the people.
20whats missing from this picture?
private
public
21what are the connections between the public and
the private?
- private public
state -
- social civil society
economic sphere - see writings by hegel, arendt, gramsci, etc.
- e.g., hegel civil society as the domain of
rights and freedoms guaranteed by the state - gramsci on the disctinction between civil society
and economic sphere
22resistances between private and public
-
- private
public - what divides the private from the public?
- what reduces the efficiency of the connections
between private and public?
23lessig on the merits of inefficiency
- I am arguing that a kind of inefficiency should
be built into these emerging technologies an
inefficiency that makes it harder for these
technologies to be misused. And of course it is
hard to argue that we ought to build in features
of the architecture of cyberspace that will make
it more difficult for government to do its work.
It is hard to argue that less is more. - Lessig, p. 19
24lessig on inefficiency (continued)
- But though hard, this is not an argument unknown
in the history of constitutional democracies.
Indeed, it is the core of much of the design of
many of the most successful constitutional
democracies that we build into such
constitutions structures of restraint, that will
check, and limit the efficiency of government, to
protect against the tyranny of government. - Lessig, p. 19
25gandy on the merits of inefficiency
- ...data mining systems are designed to facilitate
the identification and classification of
individuals into distinct groups or segments.
From the perspective of the commercial firm, and
perhaps for the industry as a whole, we can
understand the use of data mining as a
discriminatory technology in the rational pursuit
of profits. However, as a society organized under
different principles, we have come to the
conclusion that even relatively efficient
techniques should be banned or limited because of
what we have identified as unacceptable social
consequences - Gandy, pp. 11-12
26digital media versus computer science
- digital media studies some architectures (e..g.,
democratic ones) are best designed to be
inefficient - computer science efficiency is almost always
considered to be a virtue efficient
architectures are usually good architectures
27lessig on architecture
- however, by architecture lessig means, more or
less, what computer scientists mean when they say
architecture configuration/assemblages of
hardware and software
28lessig on code and architecture
- The code of cyberspace -- whether the Internet,
or net within the Internet -- the code of
cyberspace defines that space. It constitutes
that space. And as with any constitution, it
builds within itself a set of values, and
possibilities, that governs life there ... I've
been selling the idea that we should assure that
our values get architected into this code. That
if this code reflects values, then we should
identify the values that come from our tradition
-- privacy, free speech, anonymity, access -- and
insist that this code embrace them if it is to
embrace values at all. Or more specifically
still I've been arguing that we should look to
the structure of our constitutional tradition,
and extract from it the values that are
constituted by it, and carry these values into
the world of the Internet's governance -- whether
the governance is through code, or the governance
is through people. - Open Code and Open Societies Values of Internet
Governance Larry Lessig (1999)
29lessig on architecture of privacy
- Life where less is monitored is a life more
private and life where less can (legally
perhaps) be searched is also a life more private.
Thus understanding the technologies of these two
different ideas understanding, as it were,
their architecture is to understand something
of the privacy that any particular context makes
possible. - Lessig, p. 1
30architectures of privacy
- from doors, windows and fences
- to wires, networks, wireless networks, databases
and search engines
31lessig
32monitoring on the web
- what does your web browser reveal about you?
- standard HTTP headers
- From Users email address
- User-Agent Users browser software
- Referer Page user cam from by following a link
- Authorization User name and password
- Client-IP Client IP address
- Cookie Server-generated ID label
33cookies
- cookies are information that a web server stores
on the machine running a web browser - try clearing all of the cookies in your web
browser and the visit the www.nytimes.com site
34encyption
35search/elaboration/data mining
- what lessig calls search,
- what agre calls elaboration, and
- what gandy discusses as data mining
- are converging concerns about the production of a
permanent, inspectible record of ones non-public
life and thus a shrinking in size and kind of
ones private life
36searching on the web
- search engines make many things (sometimes
surprisingly) public
37agre on elaboration
- The captured activity records, which are in
economic terms among the products of the
reorganized activity, can now be stored,
inspected, audited, merged with other records,
subjected to statistical analysis, ... and so
forth. - p. 747
38data mining is one form of elaboration
- gandy (p. 4) on data mining
- ...data mining is an applied statistical
technique. The goal of any datamining exercise is
the extraction of meaningful intelligence, or
knowledge from the patterns that emerge within a
database after it has been cleaned, sorted and
processed....
39goals of data mining
- In general, data mining efforts are directed
toward the generation of rules for the
classification of objects. These objects might be
people who are assigned to particular classes or
categories, such as that group of folks who tend
to make impulse buys from those displays near the
check out counters at the supermarket. The
generation of rules may also be focused on
discriminating, or distinguishing between two
related, but meaningfully distinct classes, such
as those folks who nearly always use coupons,
and those who tend to pay full price. Gandy, p.
5.
40types of data mining
- descriptive compute a relatively concise,
description of a large data set - predictive predict unknown values for a variable
for one or more known variables - e.g., will this person likely pay their bills on
time?
41data mining tasks
- regression
- classification
- clustering
- inference of associative rules
- inference of sequential patterns
42data mining task
- regression infer a function that relates a known
variable to an unknown variable - e.g., advertising how much will sales increase
for every extra 1000 spent on advertising?
43data mining task
- classification given a set of categories and a
datum, put it into the correct category - e.g., direct-mail marketing given a persons zip
code, age, income, etc. predict if they are
likely to buy a new product
44data mining task
- clustering given a data set divide it into
groups - e.g., segmenting customers into markets given a
set of statistics (e.g., age, income, zip code,
buying habits) about a large number of consumers,
divide them into markets e.g., yuppie, soccer
mom, etc.
45data mining task
- inference of sequential patterns given a set of
series, determine which things often occur before
others - e.g., predicting a customers next purchase
determine which products are bought in a series
e.g., bookstore intro to spanish 1, intro to
spanish 2, don quixote e.g., nursery grass
seed, fertilizer, lawn mower
46data mining task
- inference of associative rules given a set of
sets, determine which subsets commonly occur
together - e.g., supermarket layout given a database of
items customers have bought at the same time,
determine which items should adjacent in the
store e.g., if diapers and milk are often bought
with beer, then place the beer next to the milk. - e.g., amazon.coms people who bought this book
also bought... - Amazons feature is an example of a recommender
system or a collaborative filter
47data mining applications
- data mining is used for
- market research and other commercial purposes
- science (e.g., genomics research)
- intelligence gathering (e.g., identification of
suspects by homeland security) - might data mining be used for the purposes of
less powerful citizens? e.g., - news analysis (cf, the function of FAIR)
- government watch dog operations (cf., Amnesty
International)
48technologies and architectures of privacy
- technologies and architectures are important
influences on the production and change of
private and public space - but, they do not independently determine what is
public and what is private (to think they do is
called technological determinism) - we need to understand not just the machines, but
also the people mediated by these technologies
we need to understand the whole as a machination,
a heterogeneous network of people and machines
thus lessigs mention (in addition to
architecture) of laws, norms, and the market
49architectures and inefficiencies
- sometimes inefficient architectures, inefficient
technologies are good technologies because they
allow for or facilitate resistance by the less
powerful in the face of powerful individuals,
corporations and governments
50next time
- social networks / social software