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辅导CMT307留学生、讲解Machine Learning、辅导Python编程设计、讲解Python讲解SPSS|辅导留学生 Statis

Cardiff School of Computer Science and Informatics
Coursework Assessment Pro-forma
Module Code: CMT307
Module Title: Applied Machine Learning
Assessment Title: Coursework 1
Assessment Number: 1
Date Set: Monday, October 28th
Submission Date and Time: Tuesday, January 14th at 9:30am
Return Date: Friday, February 7th
This assignment is worth 50% of the total marks available for this module. If coursework is
submitted late (and where there are no extenuating circumstances):
1 If the assessment is submitted no later than 24 hours after the deadline,
the mark for the assessment will be capped at the minimum pass mark;
2 If the assessment is submitted more than 24 hours after the deadline, a
mark of 0 will be given for the assessment.
Your submission must include the official Coursework Submission Cover sheet, which can be
found here:
Submission Instructions
This coursework consists of a portfolio divided into two parts with equal weight:
- Part (1) consists of selected homework similar to the one handed in
throughout the course. The final deliverable consists of a single PDF file,
which may include reflective answers to theoretical exercises, snippets of
Python code and solved exercises.
- Part (2) consists of a machine learning project where students implement a
basic machine learning algorithm for solving a given task. The deliverable is a
zip file with the code, and a written summary (up to 1200 words) describing
solutions, design choices and a reflection on the main challenges faced during
development.
Description Type Name
Cover sheet  Compulsory One PDF (.pdf) file [student number].pdf
Part 1 Compulsory One PDF (.pdf) file part1_[student number].pdf
Part 2 Compulsory One ZIP (.zip) file containing the Python
code
part2code_[student number].pdf
Part 2 Compulsory One PDF (.pdf) file for the reflective report part2report_[student number].pdf
Any code submitted will be run in Python 3 (Linux) and must be submitted as stipulated in
the instructions above.
Any deviation from the submission instructions above (including the number and types of
files submitted) will result in a mark of zero for the assessment or question part.
Staff reserve the right to invite students to a meeting to discuss coursework submissions
Assignment
In this coursework, students demonstrate their familiarity with the topics covered in the
module via two separate parts with equal weight (50% each).
Part 1
In Part 1, students are expected to answer two types of questions: theoretical and practical.
Please answer the questions with your own words and provide short answers (fewer than
100 words each) for the theoretical questions.
1. Theory (15%)
1. What is the difference between a rule-based system and a machine learning
system? (5%)
2. What is the difference between unsupervised and supervised learning? (5%)
3. What do we mean when we say that a machine learning system is overfitting?
(5%)
2. Practice (85%)
1. Your algorithm gets the following results in a classification experiment. Please
compute the precision, recall, f-measure and accuracy *manually* (without the
help of your computer/Python, please provide all steps and formulas). Include
the process to get to the final result. (20%)
Id Prediction Gold
1 True True
2 True True
3 False True
4 True True
5 False True
6 False True
7 True True
8 True True
9 True True
10 False False
11 False False
12 False False
13 True False
14 False False
15 False False
16 False False
17 False False
18 True False
19 True False
20 False False
2. You are given a dataset (named Wine dataset) with different measured
properties of different wines (dataset available in Learning Central). Your goal is
to develop a machine learning model to predict the quality of an unseen wine
given these properties. Train two machine learning regression models and check
their performance. Write, for each of the models, the main Python instructions
to train and predict the labels (one line each, no need to include any data
preprocessing) and the performance in the test set in terms of Root Mean
Squared Error (RMSE) (30%)
3. Train an SVM binary classifier using the Hateval dataset (available in Learning
Central). The task consists of predicting whether a tweet represents hate speech
or not. You can preprocess and choose the features freely. Evaluate the
performance of your classifier in terms of accuracy using 10-fold cross-validation.
Write a table with the results of the classifier (accuracy, precision, recall and
F-measure) in each of the folds and write a small summary (up to 500 words) of
how you preprocessed the data, chose the feature/s, and trained and evaluated
your model (35%)
Part 2
In Part 2, students are provided with a sentiment analysis dataset (IMDb). The dataset
contains positive and negative movie reviews. Training, development and test splits are
provided. Based on this dataset, students will be asked to preprocess the data, select
features and train a machine learning model of their choice to solve this problem. Students
should include at least three different features to train their model, one of them should be
based on some sort of word frequency. Students can decide the type of frequency (absolute
or relative, normalized or not) and text preprocessing for this mandatory word frequency
feature. The remaining two (or more) features can be chosen freely. Then, students are
asked to perform feature selection to reduce the dimensionality of all features.
Deliverables for this part are the Python code including all steps and an essay of up to 1200
words. The Python code should include the Python scripts and a README file with
instructions on how to run the code in Linux. Jupyter notebooks with clear execution paths
are also accepted. The code should take the training set as input, and output the results in
the test set. The code will consist of 25% of the marks for this part and the essay the
remaining 75%. The code should contain all necessary steps described above: to get the full
marks for the code, it should work properly and clearly perform all required steps. The essay
should include:
1) Description of all steps taken in the process (preprocessing, choice of features,
feature selection and training and testing of the model). (25% - The quality of the
preprocessing, features and algorithm will not be considered here)
2) Justification of all steps. Some justifications may be numerical, in that case a
development set is included to perform additional experiments. (25% - A reasonable
reasoned justification is enough to get half of the marks here. The usage of the
development set is required to get full marks)
3) Overall performance (precision, recall, f-measure and accuracy) of the trained model
in the test set. (10% - Indicating the results, even if very low, is enough to get half
of the marks here. A minimum of 65% accuracy is required to get full marks)
4) Critical reflection of how the deliverable could be improved in the future and on
possible biases that the deployed machine learning may have. (15% - The depth and
correctness of insights related to your deliverable will be assessed)
The essay may include tables and/or figures.
Extra credit (optional - 15% extra marks in the second part): For this second part students
can get extra credits by writing an essay on one specific task related to Part 2 (except for
option d, see instructions below). The essay will need to contain a maximum of 500 words
(figures/tables are allowed and encouraged) and will deal with one of the following four
specific topics:
a. Error analysis: Check the types of errors that the system submitted for Part 2 makes
and reflect on possible solutions. Qualitative analysis with specific examples is
encouraged.
b. Literature review: Write an essay about the state of the art of the field (i.e.
automatic hate speech detection). Retrieve relevant articles and digest them,
connecting them with your proposed solution to the problem in Part 2.
c. Model comparison: Propose and evaluate machine learning systems of different
nature from the ones taught during the course. Write a table with all results and
analyze the strengths and limitations of the approaches.
d. Code release: Create a GitHub or Bitbucket repository with the data and Python
code used for Part 2, with very clear instructions on how to run the code from the
terminal and about its different functionalities/parameters. Include all necessary
data, provide full documentation and comment on the code. Students only need to
include the link to the repository in the pdf.
Learning Outcomes Assessed
This coursework covers the 7 LOs listed in the module description. Specifically:
Part 1: LO1, LO2
Part 2: LO1, LO3, LO4, LO5, LO6
Criteria for assessment
Credit will be awarded against the following criteria.Credit will be awarded against the
following criteria.
➢ Part 1. The main criteria for assessment in based on the correctness of the answer,
unless a written reflection is required, in which case correctness/performance and
written justification weigh 50% each.
➢ Part 2. This part is divided into Python code (25%) and an essay (75%). The code will
be evaluated based on whether it works or not, and whether it minimally contains
the necessary steps required for the completion of Part 2. Four items will be
evaluated in the essay, whose weights and descriptions are indicated in the
assessment instructions. The main criteria to evaluate those items will be the
adequacy of the answer with respect to what was asked, and the justification
provided.
The grade range is divided in:
Distinction (70-100%)
Merit (60-69%)
Pass (50-59%)
Fail (0-50)
Feedback and suggestion for future learning
Feedback on your coursework will address the above criteria. Feedback and marks will be
returned between February 3rd and February 7th via Learning Central. There will be
opportunity for individual feedback during an agreed time.
Feedback for this assignment will be useful for subsequent skills development, such as data
science, natural language processing and deep learning (which will be studied during the
second semester).

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