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University of Michigan

Data Science Ethics

H.V. Jagadish

Instructor: H.V. Jagadish

46,828 already enrolled

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Gain insight into a topic and learn the fundamentals.
4.7

(1,109 reviews)

Beginner level
No prior experience required
Flexible schedule
Approx. 14 hours
Learn at your own pace
95%
Most learners liked this course
Gain insight into a topic and learn the fundamentals.
4.7

(1,109 reviews)

Beginner level
No prior experience required
Flexible schedule
Approx. 14 hours
Learn at your own pace
95%
Most learners liked this course

What you'll learn

  • Examine the ethical and privacy implications of collecting and managing big data.

  • Explore the broader impact of the data science field on modern society.

  • Understand who owns data, how we value privacy, how to receive informed consent and what it means to be fair.

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Assessments

9 assignments

Taught in English

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There are 10 modules in this course

Module 1 of this course establishes a basic foundation in the notion of simple utilitarian ethics we use for this course. The lecture material and the quiz questions are designed to get most people to come to an agreement about right and wrong, using the utilitarian framework taught here. If you bring your own moral sense to bear, or think hard about possible counter-arguments, it is likely that you can arrive at a different conclusion. But that discussion is not what this course is about. So resist that temptation, so that we can jointly lay a common foundation for the rest of this course.

What's included

4 videos4 readings1 assignment1 discussion prompt

Early experiments on human subjects were by scientists intent on advancing medicine, to the benefit of all humanity, disregard for welfare of individual human subjects. Often these were performed by white scientists, on black subject. In this module we will talk about the laws that govern the Principle of Informed Consent. We will also discuss why informed consent doesn’t work well for retrospective studies, or for the customers of electronic businesses.

What's included

4 videos1 assignment1 discussion prompt

Who owns data about you? We'll explore that question in this module. A few examples of personal data include copyrights for biographies; ownership of photos posted online, Yelp, Trip Advisor, public data capture, and data sale. We'll also explore the limits on recording and use of data.

What's included

5 videos1 assignment1 discussion prompt

Privacy is a basic human need. Privacy means the ability to control information about yourself, not necessarily the ability to hide things. We have seen the rise different value systems with regards to privacy. Kids today are more likely to share personal information on social media, for example. So while values are changing, this doesn’t remove the fundamental need to be able to control personal information. In this module we'll examine the relationship between the services we are provided and the data we provide in exchange: for example, the location for a cell phone. We'll also compare and contrast "data" against "metadata".

What's included

7 videos2 readings1 assignment1 discussion prompt

Certain transactions can be performed anonymously. But many cannot, including where there is physical delivery of product. Two examples related to anonymous transactions we'll look at are "block chains" and "bitcoin". We'll also look at some of the drawbacks that come with anonymity.

What's included

4 videos1 assignment1 discussion prompt

Data validity is not a new concern. All too often, we see the inappropriate use of Data Science methods leading to erroneous conclusions. This module points out common errors, in language suited for a student with limited exposure to statistics. We'll focus on the notion of representative sample: opinionated customers, for example, are not necessarily representative of all customers.

What's included

10 videos1 reading1 assignment1 discussion prompt

What could be fairer than a data-driven analysis? Surely the dumb computer cannot harbor prejudice or stereotypes. While indeed the analysis technique may be completely neutral, given the assumptions, the model, the training data, and so forth, all of these boundary conditions are set by humans, who may reflect their biases in the analysis result, possibly without even intending to do so. Only recently have people begun to think about how algorithmic decisions can be unfair. Consider this article, published in the New York Times. This module discusses this cutting edge issue.

What's included

6 videos1 reading1 assignment1 discussion prompt

In Module 8, we consider societal consequences of Data Science that we should be concerned about even if there are no issues with fairness, validity, anonymity, privacy, ownership or human subjects research. These “systemic” concerns are often the hardest to address, yet just as important as other issues discussed before. For example, we consider ossification, or the tendency of algorithmic methods to learn and codify the current state of the world and thereby make it harder to change. Information asymmetry has long been exploited for the advantage of some, to the disadvantage of others. Information technology makes spread of information easier, and hence generally decreases asymmetry. However, Big Data sets and sophisticated analyses increase asymmetry in favor of those with ability to acquire/access.

What's included

5 videos1 reading1 assignment1 discussion prompt

Finally, in Module 9, we tie all the issues we have considered together into a simple, two-point code of ethics for the practitioner.

What's included

3 videos1 reading1 assignment1 peer review

This module contains lists of attributions for the external audio-visual resources used throughout the course.

What's included

5 readings

Instructor

Instructor ratings
4.7 (343 ratings)
H.V. Jagadish
University of Michigan
1 Course46,828 learners

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