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COMP20008 Elements of Data Processing
Assignment 1
March 3, 2021
Due date
The assignment is worth 20 marks, (20% of subject grade) and is due 8:00am Thursday
1
st April 2021 Australia/Melbourne time.
Background
Learning outcomes
The learning objectives of this assignment are to:
Gain practical experience in written communication skills for documenting for data
science projects.
Practice a selection of processing and exploratory analysis techniques through visualisation.
Practice text processing techniques using Python.
Practice widely used Python libraries and gain experience in consultation of additional
documentation from Web resources.
Your tasks
There are three parts in this assignment, Part A, Part B, and Part C. Part A and Part B are
worth 9 marks each and Part C is worth 2 marks.
Getting started
Before starting the assignment you must do the following:
Create a github account at https://www.github.com if you don’t already have one.
Visit https://classroom.github.com/… and accept the assignment. This
will create your personal assignment repository on github.
Clone your assignment repository to your local machine. The repository contains important
files that you will need in order to complete the assignment.
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COMP20008 2021 SM1
Part A (Total 9 marks)
For Part A, download the complete“Our World in Data COVID-19 dataset”(“owid-coviddata”)
from https://covid.ourworldindata….
Part A Task 1 Data pre-processing (3 marks)
Program in python to produce a dataframe by

  1. (2 marks) aggregating the values of the following four variables:
    total cases
    new cases
    total deaths
    new deaths
    by month and location in the year 2020.
    The dataframe should contain the following columns after completion of this sub-task:
    location
    month
    total cases
    new cases
    total deaths
    new deaths
    Note: if there are no entries for certain combinations of locations and months, there
    should be no entry for those combinations in the dataframe.
  2. (1 mark) adding a new variable, case fatality rate, to the dataframe produced from
    sub-task 1. The variable, case fatality rate, is defined as the number of deaths per
    confirmed case in a given period. Do not impute missing values.
    The final dataframe should contain the columns in the following order:
    location
    month
    case fatality rate
    total cases
    new cases
    total deaths
    new deaths
    and the rows are to be sorted by location and month in ascending order.
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    COMP20008 2021 SM1
    Print the first 5 rows of the final dataframe to the standard output.
    Save the new dataframe to a CSV file named,“owid-covid-data-2020-monthly.csv”in
    the same directory as the python program. Your program should be called from the command
    line as follows:
    python parta1.py owid-covid-data-2020-monthly.csv
    Hint: You will need to use appropriate functions for the aggregation based on your understandings
    of the variables.
    Part A Task 2 Visualisation (2 marks)
    Program in python to produce two scatter plots:
  3. (1 mark) a scatter plot of case fatality rate (on the y-axis) and confirmed new cases on
    the x-axis) by locations in the year 2020.
    Output the plot to scatter-a.png in the same directory as the python program.
  4. (1 mark) a second scatter plot of the same data with only one change: the x-axis is
    changed to a log-scale.
    Output the plot to scatter-b.png in the same directory as the python program. For
    this plot, apply preprocessing if necessary.
    Your program should be called from the command line as follows:
    python parta2.py scatter-a.png scatter-b.png
    Part A Task 3 Discussion and visual analysis (4 marks)
    A short report of your visual analysis of the two plots produced from Task 2.
    It is expected that the visual analysis would include:
  5. (1.5 marks) a brief introduction/description of the raw data, including the source, any
    limitations you observe in the data and all preprocessing steps taken on the raw data
    to produce the visualisations,
  6. (1.5 marks) explanation of the plots and patterns observed, and
  7. (1 mark) a discussion contrasting the two scatter plots.
    The report is to be 500 – 600 (maximum) words excluding figures, about 1 page, in pdf
    format, and must include the two plots, scatter-a.png and scatter-b.png, produced
    from Part A Task 2.
    The filename of the report must be“owid-covid-2020-visual-analysis.pdf”.
    Part B (Total 9 marks)
    For Part B, download the cricket dataset from the LMS. This dataset contains a sample of
    cricket-related articles from BBC News. We wish to build a search engine that will allow a
    user to specify keywords and find all articles related to those keywords.
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    COMP20008 2021 SM1
    Part B Task 1: Regular Expressions (1 mark)
    Each article contains a document ID which uniquely identifies the document. This document
    ID is comprised of four letters followed by a hyphen, followed by three numbers and optionally
    ending in a letter. For example, each of the following are valid document IDs:
    ABCD-123
    ABCD-123V
    XKCD-999A
    COMP-200
    The document IDs are not located in a consistent place in each article. Use a regular expression
    to identify the document ID for each document in the dataset. Write a Python program
    in partb1.py that produces a CSV file called partb1.csv containing the filenames and Document
    IDs for each document in the dataset. Your CSV file should contain the following
    columns in the order below:
    filename
    documentID
    Your program should be called from the command line along with the name of the CSV file:
    python partb1.py partb1.csv
    Part B Task 2: Preprocessing (1 mark)
    We now wish to perform the following preprocessing on each article in the cricket folder in
    order to make them easier to search:
    Remove all non-alphabetic characters (for example, numbers and punctuation characters),
    except for spacing characters such as whitespaces, tabs and newlines.
    Convert all spacing characters such as tabs and newlines to whitespace and ensure that
    only one whitespace character exists between each word
    Change all uppercase characters to lower case
    Create a Python program in partb2.py that performs this preprocessing.
    Your program should be called from the command line along with the filename of a document.
    For example:
    python partb2.py cricket001.txt
    Your program should then load the specified file, perform the preprocessing steps above
    and print the results to standard output.
    Hint: You may wish to create a function for performing this preprocessing as you will need
    to perform this pre-processing as part of each task in Part B
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    COMP20008 2021 SM1
    Part B Task 3: Basic Search (2 marks)
    Create a Python program in partb3.py that will allow the user to search for articles containing
    particular keywords. Your program should be called from the command line along
    with the keywords being searched for. For example:
    python partb3.py keyword1 keyword2 keyword3
    You can assume each keyword will be separated by a whitespace character and that
    between 1 and 5 keywords will be entered. Your program should then return the document
    IDs of the documents that contain all of the keywords in the user’s search query. For this
    task:
    You should check for matches after performing the preprocessing in Task 2. For example,
    searching for the word’old’should return articles containing the words’Old’or’OLD’.
    The keywords that the user searches for are separate keywords. You are not required to
    match exact phrases. For example, if a user searches for the keywords’captain early’,
    these words do not need to appear consecutively in the document to constitute a match.
    Only documents that contain the actual keyword should return a match. For example,
    searching for the word’old’should not return articles containing the word’golden’.
    Your program should output the document IDs of each article containing all of the specified
    keywords.
    Hint: You may wish to load partb1.csv back into your program
    Part B Task 4: Advanced Search (2 marks)
    We now wish to expand the search feature to enable inexact matching. For example, a
    user should be able to specify the keyword’missing’and the search should also return articles
    containing the related words’missed’or’miss’. Create a Python program in partb4.py based
    on your response to Task 3 that uses a Porter Stemmer to enable this inexact matching. Your
    program should be called from the command line along with the keywords being searched for.
    For example:
    python partb4.py keyword1 keyword2 keyword3
    Your program should output the document IDs of each article containing all of the specified
    keywords, or words considered by the Porter Stemmer to have the same base. For this task:
    You should check for matches after performing the preprocessing in Task 2. For example,
    searching for the word’old’should return articles containing the words’Old’or’OLD’.
    The keywords that the user searches for are separate keywords. You are not required to
    match exact phrases. For example, if a user searches for the keywords’captain early’,
    these words do not need to appear consecutively in the document to constitute a match.
    Other than inexact matches permitted by the Porter Stemmer, only documents that
    contain the actual keyword should return a match. For example, searching for the word
    ’old’should not return articles containing the word’golden’.
    Note that other than the final point this list of requirements is the same as for Task 3.
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    COMP20008 2021 SM1
    Part B Task 5: Search Rankings (3 marks)
    We wish to further expand the search feature to enable documents to be ranked, so that
    those most relevant to the user’s keywords are displayed at the top of the list. One way
    of computing such a ranking is to use TF-IDF along with the cosine similarity measure as
    discussed in lectures. Create a Python program in partb5.py based on your response to
    Task 4 that ranks articles returned by Task 4 by cosine similarity score.
    Your program should be called from the command line along with the keywords being
    searched for. For example:
    python partb5.py keyword1 keyword2 keyword3
    Your program should output:
    The headings’documentID’and’score’
    The document IDs of each article containing all of the specified keywords, or words
    considered by the Porter Stemmer to have the same base.
    The cosine similarity score between the vector of stemmed keywords and the vector of
    stemmed words appearing in the document for each document matched, rounded to
    four decimal places.
    You should assume that the collection being used by TF-IDF is the complete list of stemmed
    words contained in articles returned by your Task 4 search. The output should be sorted in
    descending order by cosine similarity score with the search query. For example, one sample
    output might look like this:
    documentID score
    JDKC-105M 0.0618
    BTAR-174V 0.0182
    Part C(Total 2 marks)
    GitHub Submission
    Ensure all of your completed code files as well as your report have been pushed to the github
    repository you created in the’Getting Started’section. We strongly encourage you to push an
    updated version of your code to your github repository each time you make a major change.
    Your repository must also contain a README file, which must contain your name and student
    ID. It must also contain a brief description of your project and a list of dependencies.
    Submission Instructions
    Submit all pythin scripts and the pdf discussion report via LMS. A complete submittion
    includes the following items:
  8. parta1.py
  9. parta2.py
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    COMP20008 2021 SM1
  10. owid-covid-2020-visual-analysis.pdf
  11. partb1.py
  12. partb2.py
  13. partb3.py
  14. partb4.py
  15. partb5.py
  16. A link to your GitHub repository
    You must also have pushed the above files to your github repository, which the teaching staff
    already have access to.
    Extensions and late submission penalties
    If requesting an extension due to illness, please submit a medical certificate to the lecturer.
    If there are any other exceptional circumstances, please contact the lecturer with plenty of
    notice. Late submissions without an approved extension will attract the following penalties
    0 < hourslate <= 24 (2 marks deduction)
    24 < hourslate <= 48 (4 marks deduction)
    48 < hourslate <= 72: (6 marks deduction)
    72 < hourslate <= 96: (8 marks deduction)
    96 < hourslate <= 120: (10 marks deduction)
    120 < hourslate <= 144: (12 marks deduction)
    144 < hourslate: (20 marks deduction)
    where hourslate is the elapsed time in hours (or fractions of hours).
    This project is expected to require 15-20 hours work.
    Academic honesty
    You are expected to follow the academic honesty guidelines on the University website
    https://academichonesty.unime…
    Further information
    A project discussion forum has also been created on the Ed forum. Please use this in the
    first instance if you have questions, since it will allow discussion and responses to be seen by
    everyone. There will also be a list of frequently asked questions on the project page.
    WX:codehelp
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