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Topic Algorithmic Persuasion In The Digital Society Notes

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These are my notes for Algorithmic Persuasion that I used to study for the exam. I got a 8.5 :)

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Algorithmic Persuasion
Lecture 1

Introduction to Algorithms

 Algorithms: encoded procedures for transforming input data into a desired output,
based on specified calculations (Gillespie, 2014)
 Input  Algorithm (set of rules to obtain the expected output given the
input)  Output

Algorithmic Power

1. Prioritization: making an ordered list; emphasise or bring attention to certain things
at the expense of others.
Ex: Google page ranks; what comes first depends on the person searching.
2. Classification: picking a category; categorize a particular entity to given class by
looking at any number of that entity’s features
Ex: inappropriate YouTube content
3. Association: finding links; association decisions mark relationships between entities
Ex: OKCupid dating match.
4. Filtering: isolating what’s important; including or excluding information according to
various rules of criteria. Inputs to filtering algorithms often take prioritizing,
classification or association decisions into account.
Ex: Facebook news feed.

Types of algorithms

Rule-based algorithms

 Simple, based on specific steps or rules.
 IF THEN statements  IF ‘condition’ THEN ‘result’
 +: quick easy to follow
 -: but only applicable to the specified conditions, time consuming

Machine learning algorithms

 Algorithms that learn by themselves (based on statistical models rather than rules)

 These algorithms are “trained” based on a large set of data from which they try to
learn/find patterns to make certain decision without human oversight
 +: flexible and amenable to adaptation.
 -: need to be trained and black-box (not knowing why the algorithm made
the decision).

 In data-intensive online environments, ML algorithms have become the standard

,  Logic: train the algorithm on a sample of data and then it can be used for making
predictions about other data

 Facebook, Amazon, Netflix, etc. use ML algorithms
 They have loads of data, thus the machine has a lot to learn
 A few hundred lines of code can easily generate a model consisting of
millions of lines.

 Example: Facebook’s DeepFace algorithm
 Facial recognition system
 It identifies human faces in digital images
 Trained on a large “identity labelled dataset” of four million facial images
 97% accuracy
 Zuboff: these systems can be sold to businesses and authoritarian regimes.

Level of Automation In Algorithms




Recommender Systems

 Recommender Systems are algorithms that provide suggestions for content that is
most likely of interest to a particular user.
 These algorithms that decide which content to display to whom based on
certain criteria
 Users are thus receiving distinct streams of online content
 Facebook news feed, Netflix movie suggestions, songs on Spotify,
videos on YouTube, products on Amazon, etc.

 Rationale: avoid choice overload, to maximise user relevance, and to increase work
efficiency.

,  Content-based filtering: these algorithms learn to recommend items that are similar
to the ones that the user liked in the past (based on similarity of items)

 Collaborative filtering: these algorithms suggests recommendations to the user
based on items that other users with similar tastes liked in the past

 Hybrid filtering: these algorithms combine features from both content and
collaborative systems, and usually with other additional elements such as
demographics.
 Netflix’s recommender system.

Views On Algorithms

Algorithmic Appreciation

 People rely more on advice from algorithms than from other people, despite
blindness to algorithm’s process (“black-box”).

 Automation bias: humans tend to over-rely on automation (blind faith in
information from computers).
 Information from automation > information from humans
 Humans are imperfect, whereas computers are objective, rational, neutral,
reliable, etc.
 Ex: GPS systems, automatic pilot, spelling checker, etc.

Algorithmic Aversion

 Tendency to prefer human judgements over algorithmic decisions ,even when the
human decisions are clearly inferior

 Less tolerance for errors from algorithms than from humans
 Ex: GPS leads you into a traffic jam, you’d over-react.

 People are averse because they don’t understand the algorithmic process
 They think human decisions are easier to understand, but this is subjective!

 Algorithmic anxiety: lack of control and uncertainty over algorithms creates anxiety
among Airbnb hosts.

 Aversion or appreciation depend on many other factors:
 Type of task
 Level of subjectivity in decisions
 Individual characteristics
 Etc. (more research is needed)

 Also, the choice is not always “human vs algorithm”

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Publié le
12 février 2022
Nombre de pages
29
Écrit en
2020/2021
Type
Notes de cours
Professeur(s)
Sophie boerman & brahim zarouali
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