COMPSCI 361 Machine Learning 重点解析

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THE UNIVERSITY OF AUCKLAND

SEMESTER ONE 2020
Campus: City

COMPUTER SCIENCE

Machine Learning

NOTE:

This Final Assessment is out of 100 marks.
Attempt ALL questions.
You will need to put your answers into the Answer Booklet and save it as a pdf
document. Upload the file on Canvas, like you do for the assignments.
This is an Open Book assessment. You may refer to and cite any written/printed
material, including online sources.
You need to demonstrate your understanding of the subject matter and the ability
to construct a well described solution or organised arguments to answer the
question(s). Quotations (if used) should be used rarely and selectively.
You should include proper referencing of any material you have used (including
author and year of publication). It is important that you do not just provide a list of
quotations. Quotations should be used to support your own argument not replace it.
When a question requests you to explain your answer, that means you need to justify
how you came up with the solution or why you made a certain choice. Be concise and
as clear as possible.
You may choose to use diagram(s) to aid in your discussion. If you choose to do so,
you may embed photo(s) of hand drawn diagram(s) into the answer booklet.
It is your responsibility to ensure that the diagrams are clear, legible, and have
proper resolution.
Please use standard text processing tools to type the answers and avoid hand-written
answers where possible. Use images only when it is required.
This Final Assessment has been designed so that a well-prepared student could
complete it within 2 hours.

If you wish to raise concerns during the Final Assessment, please call the Contact
Centre for advice: Auckland: 09 373 7513, Outside Auckland: 0800 61 62 63,
International: +64 9 373 7513
It is your responsibility to ensure your assessment is successfully submitted on time.
Please don’t leave it to the last minute to submit your assessment.
For any Canvas issues, please use 24/7 help on Canvas by chat or phone.
If any corrections are made during the 24 hours, you will be notified by a Canvas
Announcement. Please ensure your notifications are turned on during this period.
Academic honesty declaration

By completing this assessment, I agree to the following declaration:
I understand the University expects all students to complete coursework with integrity and
honesty. I promise to complete all online assessments with the same academic integrity
standards and values. Any identified form of poor academic practice or academic misconduct
will be followed up and may result in disciplinary action.
As a member of the University’s student body, I will complete this assessment in a fair,
honest, responsible and trustworthy manner. This means that:
I declare that this assessment is my own work.
I will not seek out any unauthorised help in completing this assessment.
I am aware the University of Auckland will use plagiarism detection tools to check my
content.
I will not discuss the content of the assessment with anyone else in any form,
including, Canvas, Piazza, Facebook, Twitter or any other social media or online
platform within the assessment period.
I will not reproduce the content of this assessment anywhere in any form at any time.
I declare that I generated the calculations and data in this assessment independently,
using only the tools and resources defined for use in this assessment.
I will not share or distribute any tools or resources I developed for completing this
assessment.
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