I’m working on a computer science project and need an explanation to help me understand better.CompetenciesIn this project, you will demonstrate your mastery of the following competencies:Explain the basic concepts and techniques that pertain to artificial intelligence and intelligent systems
Analyze current trends and emerging technologies in Computer Science for their impacts on society
ScenarioYou are the lead engineer for a major social networking company that
utilizes neural networks in its personalization algorithms.
Personalization plays a major role in your business model.
The company
is an industry leader in user experience and your customers expect the
software to anticipate their needs in terms of recommended posts,
recommendations for friends requests, groups to join based on shared
interests, news articles they may be interested in, discussions they may
want to join, games they may want to play, and other features available
on the site.
This experience is monetized through targeted advertising.
Your sales reps claim a click-through rate that is double that of your
closest competitor because you know everything there is to know about
your users.To achieve these results, the company collects user data in the form
of mouse clicks, site navigation, links followed, time spent on a page,
location data, and so on.
Everything a user does within the app is
stored and fed into multiple neural networks that create models designed
to personalize the user’s experience on the site. In a nutshell, these
algorithms are designed to create a personalized user experience that
will maximize the time a user spends on the site and the number of ads
they click on.
An EU regulator has brought to the company’s attention
that you may be violating some aspects of the GDPR law. Specifically,
they are concerned that your business model may not conform to some or
all of the following principles defined by the law:Transparency: The company must make it clear how they are using data.
Purpose limitation: Data may be gathered for pre-specified purposes, not archived and reused for any future use.
Data minimization: Only the data gathered for those pre-determined purposes may be gathered, not more.
Accuracy: Companies have a responsibility to keep data up-to-date and accurate, and must fix inaccuracies as soon as possible.
Storage limitation: Data may only be retained as long as it is applicable to the purposes noted above; it cannot just be stored indefinitely.
Confidentiality: Data must be kept secure and confidential to a reasonably expected degree.
Accountability: Companies may be held responsible for following these principles and can be penalized if they do not.
You have been asked to write a white paper that addresses the
regulator’s concerns.
Your white paper will be presented to an
interdepartmental team of systems engineers, software developers, AI
experts, and members of the legal team, so that they can move forward
with bringing your company into GDPR compliance.DirectionsWhite PaperUsing your knowledge of how neural networks work and the GDPR
principles outlined above, write a white paper that addresses the
regulator’s concerns. Recommend changes where necessary and defend
existing practices where applicable. Note that proposing remedies to one
principle may violate another. In order to adequately address each
aspect of the prompt, you will need to support your ideas with research
from your readings.
You must include citations for sources that you used.Explain the basics of neural networks and how they work by addressing the following:
Provide a brief explanation of how neural networks work. How do the
input layer, hidden layer, and output layer interact to classify
objects? Consider the fact that your target audience may have limited
technical knowledge.
Evaluate how neural networks are used to create personalization by addressing the following:
How are neural networks utilized to aid in the personalization of the user experience?
What ethical concerns can this raise? Consider hidden biases that
may arise in using a “black box” classification system, where the
algorithms are unknown to the user.
Analyze how portions of the GDPR affect personalization by addressing the following:
Summarize the portions of the GDPR that affect personalization. Be sure to consider at least four
of the following in your answer: transparency, purpose limitation, data
minimization, accuracy, storage limitation, confidentiality, and
accountability.
Assess how the GDPR is affecting the company’s practices by addressing the following:
What specific legal concerns may arise from your company’s use of
neural networks as a classifier to personalize the user experience?
Is not collecting data a possibility for the company’s business model? Defend your answer.
Propose adaptations to the company’s practices to act in compliance with the GDPR by addressing the following:
What are the current trends (best practices) in artificial intelligence and machine learning aimed at preserving privacy?
What changes to the way the company collects, stores, and employs
user data do you propose to comply with GDPR? Defend existing practices
where applicable.
What to SubmitTo complete this project, you must submit the following:White PaperYour submission should be a 3– to
5–page Word document with 12-point Times New Roman font, double spacing,
and one-inch margins. Sources should be cited according to APA style.Supporting MaterialsThe following resource(s) may help support your work on the project:Website: Guide to the General Data Protection Regulation (GDPR)This
website will provide you with a summary of the principles behind the
GDPR laws. Begin by reviewing the first page so that you understand the
purpose of the guide.
Then be sure to concentrate on each of the pages
under the “Principles” section. Concentrate on each of the pages under
the “Principles” section as they are outlined in the guide to the
general data protection regulation. As you read, be sure to consider how
each principle would impact the company’s business model for your
project.
Reading: AI and the Janus Face of the GDPR – Chance or Challenge?This
reading discusses several impacts of the GDPR on Artificial
Intelligence (AI), including challenges as well as opportunities to
create a stronger, more reliable AI. As you read, consider the following
questions:What are the potential positive and negative impacts of the standard of transparency for AI?
What are the potential positive and negative impacts of the standard of data minimization for AI?
Reading: How GDPR Can Undermine Personalization and User ExperienceThis
reading discusses some of the challenges that the GDPR creates for
businesses that use personalization and advertising. It also provides a
few suggestions for how businesses can move forward in productive ways
while still being GDPR-compliant. As you read, consider the following
questions:What principle(s) of the GDPR have affected mailing lists for companies? How are these mailing lists related to personalization?
What are the benefits and drawbacks of gaining the user’s consent to store cookies when visiting a website?
What are some of the proposed solutions to help balance the
customer’s right to privacy and companies’ desire to provide a
personalized user experience?
Reading: How to Develop Artificial Intelligence That Is GDPR-friendlyThis
reading describes the impact of the GDPR on artificial intelligence,
specifically the potential impacts on machine learning algorithms.
The
reading then suggests some possible methods that can be used to help
protect user data and enhance compliance with the GDPR. As you read,
consider the following questions:What is the main conflict between the GDPR and machine learning algorithms?
What are the specific complications with “black box” algorithms?
Why is considering potential biases of data sets important? How can biases be addressed?
What are some of the principles for good data protection?
Reading: Rethinking Data Privacy: The Impact of machine learningThis
reading provides more detail about data sets and the difficulties in
maintaining privacy for users. It also discusses how machine learning
exacerbates these difficulties, as well as describing possible solutions
in more detail. As you read, consider the following questions:What is the basic structure of a data set? What are de- and
re-identification, and why are they important in thinking about data
privacy?
What are some of the specific challenges for AI and machine learning with regard to data privacy?
What are the emerging trends to preserve privacy? How might they be applicable to the scenario for this project?
Website: General Data Protection Regulation (GDPR) – Official Legal TextThis
website contains the full text of the GDPR. Some of the other readings
in the Supporting Materials mention specific subsections of the law.
For
additional context about these sections, refer to the relevant sections
of the GDPR. Note: You are not required to read the entirety of the GDPR official legal text. This website has been included as a reference.
Requirements: 3-5 pages | C