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      CS1026A代做、Python設計程序代寫
      CS1026A代做、Python設計程序代寫

      時間:2024-11-24  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



      CS1026A Fall 2024 
      Assignment 3: YouTube Emotions 
      Important Notes: 
      • Read the whole assignment document before you begin coding. This is a more 
      complex speciffcation than in past assignments and the examples and templates 
      near the end of this document will be important in solving this assignment. 
      • Assignments are to be completed individually. Use of tools to generate code, 
      working with another person, or copying from online resources are not allowed and 
      will result in a zero on this assignment regardless of how much was copied. 
      • A code template is given in Section 6 (on page 17) for your main.py and 
      emotions.py ffles. We highly recommend using these as a starting point for your 
      assignment. The code is also attached to the assignment on OWL. 
      Change Log: 
      • Nov. 4
      th
      : The comments.csv ffle attached to Brightspace had an unexpected 
      unicode character in one of the comments the changed the outcome of some of the 
      examples given in this document. comments.csv has now been corrected and the 
      examples in this document to match. 
      • Nov. 13
      th
      : A type-o was found in the example for make_report() in section 5. This has 
      now been corrected. The output shown at the end of the document in section 7 was 
      still correct. This change has no impact on the autograder (it was marking correctly). 
       
      1. Learning Outcomes 
      By completing this assignment, you will gain skills relating to 
      • Functions 
      • Dictionaries and lists 
      • Complex data structures 
      • Text processing 
      • Working with TSV and CSV ffles 
      • File input and output 
      • Exceptions in Python 
      • Simple module use 
      • Writing code that adheres to a given speciffcation 
      • Working with real world problem 
       2. Background 
      With the emergence of social media sites such as YouTube, Facebook, Reddit, Twitter (also 
      known as X), LinkedIn, and WhatsApp, more and more data is being produced and made 
      accessible online in a textual format. This textual data, such as YouTube comments, 
      Tweets, or Facebook posts, can be hard to process but is incredibly important for 
      organizations as it offers a current snapshot of the public’s emotions (affinity) or sentiment 
      about a topic at a current point in time. Having a live view of your customer’s current affinity 
      towards your products or the public’s view of your political campaign can be critical for 
      success. 
       
      Much work has been done towards the goal of creating large datasets of word affinity or 
      sentiment. One such effort is the National Research Council (NRC) Emotion Lexicon which 
      is a list of English words and their associations with eight basic emotions (anger, fear, 
      anticipation, trust, surprise, sadness, joy, and disgust) and two sentiments (negative and 
      positive). 
       
      Our goal in this assignment is to use a simpliffed version of the NRC Emotion Lexicon to 
      classify YouTube comments based on one of the following emotions anger, joy, fear, trust, 
      sadness, or anticipation. Based on the emotion contained in each comment for a particular 
      video we then want to generate a report that details the most common emotions YouTube 
      users have towards that video based on their comments. 
       
      3. Datasets 
      Your Python program will deal with two datasets, a keywords data set that contains a 
      simpliffed version of the NRC Emotion Lexicon (this dataset will remain the same for all 
      tests of your program) and a Comma-Separated Values (CSV) ffle that contains the 
      comments for a particular YouTube video (this dataset will change for each test of your 
      program). 
       
      3.1 Keywords Dataset (TSV File) 
      The keywords.tsv ffle attached to this assignment contains a simpliffed version of the NRC 
      Emotion Lexicon. This is a Tab-Separated Values (TSV) ffle in which each line of the ffle 
      contains a single word and its emotional classiffcation based on six emotions (anger, joy, 
      fear, trust, sadness, and anticipation). Each word in the ffle may be classiffed as having one 
      or more emotions. The following is an example of the ffrst 10 lines of this ffle where tab (\t) characters are 
      represented by arrows (→): 
      abacus→0→0→0→1→0→0 
      abandon→0→0→1→0→1→0 
      abandoned→1→0→1→0→1→0 
      abandonment→1→0→1→0→1→0 
      abbot→0→0→0→1→0→0 
      abduction→0→0→1→0→1→0 
      abhor→1→0→1→0→0→0 
      abhorrent→1→0→1→0→0→0 
      abolish→1→0→0→0→0→0 
      abominable→0→0→1→0→0→0 
      Each line starts with a keyword and is followed by a score (0 or 1) for each emotion in this 
      order: anger, joy, fear, trust, sadness, and anticipation. If a 1 is present it means that 
      keyword is related to that emotion. If a 0 is present the keyword is unrelated to that 
      emotion. 
      For example, according to the above the word “abacus” is related to the emotion of trust 
      and no other emotions. The word “abandon” is related to the emotions fear and sadness 
      and no other emotions. 
      All words in the dataset will be related to at least one emotion. This ffle’s contents will 
      remain the same for all tests but may be given a different fflename based on the users input 
      (e.g. it could be named keys.tsv or words.tsv rather than keywords.tsv). 
       
       
      3.2 Comments Dataset (CSV File) 
      The user will provide a Comma-Separated Values (CSV) ffle that contains a set of YouTube 
      comments for a particular video. The name of this ffle will change based on the user’s input 
      but will always end in .csv and have the same format. 
      The following is an example of a possible line from this ffle (the ffle may contain one or 
      more lines). Note that this document wraps the line on to multiple lines but in the ffle this is 
      one line ended by a line break (\n): 
      2,PixelPioneer24,brazil,The excavation scenes in the movie were 
      excellent but the unnecessary derision of the hero's motives seemed 
      unfair. His eventuality of success was not adequately showcased. Each line of this ffle will contain four values separated by a single comma character (,). The 
      values will always be in the following order: 
      Comment ID, Username, Country, Comment Text 
      Comment ID is a unique positive integer identiffer for the comment. Username is the 
      username of the user who posted the comment. Country is the user’s home country, and 
      comment text is the text the of the comment posted by the user. 
      No value will contain a line break or a comma character. The capitalization of country 
      names could be different for each line even if it is for the same country, but the country will 
      always be spelled the same. 
      Space characters will only occur in the comment text or country name. 
       
      4. Tasks 
      In this assignment, you will write two Python ffles, emotions.py and main.py, that will 
      attempt to determine the most common emotion expressed in a YoutTube video’s 
      comments. You will create a number of functions (as speciffed in the Functional 
      Speciffcation in Section 5) that will perform simple sentiment analysis on the YouTube 
      comments. 
      To accomplish this, you will need to do the following: 
      1. Accept input from the user: The user will specify the ffle names of the keywords 
      and comments data sets as well as the name of the report ffle your program will 
      create. The user will also input the name of the country they wish to fflter the 
      comments by. 
      2. Read. Your program will read in the keyword and comments datasets and store 
      them in the formats described in the functional speciffcation (in Section 5). 
      3. Clean. The text of the comments will be cleaned to remove any punctuation and 
      convert them to all lowercase letters. 
      4. Determine Emotion. You will use the keyword’s dataset to determine the overall 
      emotion expressed in each comment. 
      5. Generate Report. Based on your analysis of each comment, you will create a report 
      ffle that contains a summary of the most common emotion expressed as well as 
      how common each emotion was (as speciffed in Section 5). Additionally, you must follow the functional speciffcation presented in Section 5 and the 
      rules and requirements in Section 8. 
       
      5. Functional Speciffcation 
      5.1 emotions.py 
      The functions described in this section should be present in your emotions.py ffle and must 
      be used in some way in your program to read, clean, process, analyze, or report on the 
      comments in the given dataset. Each function and its parameters must have the same 
      name and spelling as speciffed below: 
       
      clean_text(comment) 
      This function should have one parameter, comment, which is a string that contains the 
      text of a single comment from the comments dataset. The function should clean this 
      text by replacing any characters that are not letters (A to Z) and replacing them with 
      space characters. It should also convert the comment’s text to all lower case. 
      This function should return the cleaned text as a string. 
      Example: 
      clean_text("This4is-an example. It's a b*t silly.") 
      will result in this output: 
      this is an example it s a b t silly 
       
      make_keyword_dict(keyword_file_name) 
      This function should read the Tab-Separated Values (TSV) keywords ffle as described in 
      Section 3.1. keyword_ffle_name is a string containing the name of the keywords ffle. 
      This function can safely assume that this ffle exists, is in the current working directory, 
      and is properly formatted. Checks on the ffle’s existence will be done in the main.py ffle 
      described later in this document. 
      The function should return a dictionary with keys for each word in the ffle and the values 
      of this dictionary should be a new dictionary for each keyword that contains a value for 
      each emotion (anger, joy, fear, trust, sadness, and anticipation). Example: 
      Assuming that keywords.tsv contains the following three lines (where → is a tab 
      character): 
      abacus→0→0→0→1→0→0 
      abandon→0→0→1→0→1→0 
      abandoned→1→0→1→0→1→0 
      then calling 
      make_keyword_dict("keywords.tsv") 
      should result in the following nested dictionary data structure: 
      {'abacus': {'anger': 0, 
       'joy': 0, 
       'fear': 0, 
       'trust': 1, 
       'sadness': 0, 
       'anticipation': 0}, 
       'abandon': {'anger': 0, 
       'joy': 0, 
       'fear': 1, 
       'trust': 0, 
       'sadness': 1, 
       'anticipation': 0}, 
       'abandoned': {'anger': 1, 
       'joy': 0, 
       'fear': 1, 
       'trust': 0, 
       'sadness': 1, 
       'anticipation': 0} 
      } Note that to pass the Gradescope tests this function must return a dictionary and not 
      another collection such as a list, the keyword keys must be spelled exactly as listed in 
      keywords.tsv, and the emotions must be spelled correctly and in lower case. 
      Hint: You may find a number of the Python string methods helpful when creating this 
      function. 
       
      make_comments_list(filter_country, comments_file_name) 
      This function should read the Comma-Separated Values (CSV) file as described in 
      Section 3.2. comments_file_name is a string containing the name of the CSV file and 
      filter_country is a string containing either a country name or the string “all”. This 
      function should read the CSV file and return a list containing only comments for the 
      given country listed in filter_country (or all countries if the string “all” is given). 
      The list should contain one element for each comment in the file that matches the 
      country in the filter (or all comments if “all” is given). Each element in the list should be a 
      dictionary that contains a key for the Comment ID, Username, Country and Comment 
      Text. The keys should be named 'comment_id', 'username', 'country', and 'text' 
      respectively. 
      The comment text should be stripped of any leading and trailing whitespace. 
       
      Example 1: 
      Assuming that comments.csv only contains the following two lines (note that the line is 
      wrapped in this document and in the .csv file this is only two lines): 
      1,RetroRealm77,united states,I was a bit disappointed with the 
      film's portrayal of childhood heroism. It felt like the classic 
      elements were just concealed under layers of unnecessary savagery 
      and violence. 
      2,PixelPioneer24,brazil,The excavation scenes in the movie were 
      excellent but the unnecessary derision of the hero's motives seemed 
      unfair. His eventuality of success was not adequately showcased. 
      then calling 
      make_comments_list("all", "comments.csv") 
      should result in the following nested list and dictionary data structure: [ {'comment_id': 1, 
       'username': 'RetroRealm77', 
       'country': 'united states', 
       'text': 'I was a bit disappointed with the film's portrayal of 
      childhood heroism. It felt like the classic elements were just 
      concealed under layers of unnecessary savagery and violence.'}, 
       {'comment_id': 2, 
       'username': 'PixelPioneer24', 
       'country': 'brazil', 
       'text': 'The excavation scenes in the movie were excellent but 
      the unnecessary derision of the hero's motives seemed unfair. His 
      eventuality of success was not adequately showcased.'} ] 
       
       
       
      Example 2: 
      Given the same contents of comments.csv as in Example 1, if the following function call 
      with the country name brazil was made: 
      make_comments_list("brazil", "comments.csv") 
      then the only element in the returned list would be: 
      [ {'comment_id': 2, 
       'username': 'PixelPioneer24', 
       'country': 'brazil', 
       'text': 'The excavation scenes in the movie were excellent but 
      the unnecessary derision of the hero's motives seemed unfair. His 
      eventuality of success was not adequately showcased.'} ] 
       
       
       Example 3: 
      Given the same contents of comments.csv as in Example 1, if the function was called 
      with a country name that was not present in the file such as: 
      make_comments_list("not a real country", "comments.csv") 
      then the resulting list would be empty: 
      [] 
       
      Note that to pass the Gradescope tests this function must return a list and not another 
      collection such as a set or dictionary, the values of each list element must be a 
      dictionary, and the keys used in that dictionary must match the spelling and lowercase 
      capitalization given in this section. 
       
      classify_comment_emotion(comment, keywords) 
       
      This function takes the text of a comment and the keywords dictionary created by the 
      make_keyword_dict function as parameters and classifies the comment as one of the 
      possible emotions (anger, joy, fear, trust, sadness, and anticipation), returning the 
      emotion as a string. 
      A comment is classified by first cleaning the text (using the clean_text function) and 
      then checking each word in the comment against the keywords dictionary. A total for 
      each possible emotion should be kept with each word in the comment matching a 
      keyword adding to the totals (based on the values in the keywords dictionary). 
      Example: 
      For the comment: 
      The excavation scenes in the movie were excellent but the 
      unnecessary derision of the hero's motives seemed unfair. His 
      eventuality of success was not adequately showcased. 
      the text should be first cleaned using clean_text to get: 
      the excavation scenes in the movie were excellent but the 
      unnecessary derision of the hero s motives seemed unfair his 
      eventuality of success was not adequately showcased then each word should be checked against the keywords dictionary and the totals for 
      each emotion kept. Words not matching any words in the dictionary (shown in black 
      above) do not add to the scores. For example, using the full keywords.tsv dataset the 
      words shown in blue above have matches in the keyword dataset and would result in 
      the following totals: 
      Word anger joy fear trust sadness anticipation 
      excavation 0 0 0 0 0 1 
      excellent 0 1 0 1 0 0 
      derision 1 0 0 0 0 0 
      hero 0 1 0 1 0 1 
      unfair 1 0 0 0 1 0 
      eventuality 0 0 1 0 0 1 
      success 0 1 0 0 0 1 
      Total: 2 3 1 2 1 4 
       
       
      Therefore, this comment would be classified as having the emotion of anticipation and 
      the string “anticipation” should be returned by the function as it as the highest score. 
      In the event of a tie, the emotions should be given priority in this order: 1) anger, 2) joy, 3) 
      fear, 4) trust, 5) sadness, and 6) anticipation. 
       
      Hint: You may find the string split method useful for looping through words rather than 
      characters. 
       
      make_report(comment_list, keywords, report_filename) 
       
      This function takes the comment_list (created by the make_comments_list function), 
      the keywords dictionary (created by the make_keyword_dict function), and a string 
      containing the file name of the report to generate (report_filename) as parameters. 
      A new file should be created with the file name in report_filename and it should contain 
      the name of the most common emotion classification in the comment_list dataset as 
      well as a count of the number of comments classified as each emotion. In the event of a 
      tie the emotions should be given priority in this order: 1) anger, 2) joy, 3) fear, 4) trust, 5) 
      sadness, and 6) anticipation. 
       The format of the report should match the following example which is based on the 
      attached comments.csv and keywords.tsv with a country filter of “all”: 
      Most common emotion: anger 
       
      Emotion Totals 
      anger: 5 (33.33%) 
      joy: 2 (13.33%) 
      fear: 1 (6.67%) 
      trust: 3 (20.0%) 
      sadness: 3 (20.0%) 
      anticipation: 1 (6.67%) 
      The emotion totals should occur in the same order (regardless of the counts) but the 
      values would be different depending on the comment_list and keywords dictionary 
      passed to the function. 
      All percentages should be rounded to two digits and all six emotions should always be 
      listed even if their count is zero. Important: in your report file each percentage must be 
      written with one or two decimal places. A value such as 20.000% or 6.6700% would be 
      wrong even though it is technically rounded as there are too many decimal places. Your 
      output must be formatted exactly as shown in the example above including the spacing 
      and line breaks. 
       
       Return 
      The function should return the name of the most common emotion; in this example it 
      would be “anger”. 
       
      Exception 
      In the event that the comment_list contains no comments (i.e. it is an empty list), the 
      function should raise a RuntimeError containing the text “No comments in dataset!”. 
       
      Reminder: The report should be saved to a file and not output to the screen or returned 
      by the function. Only the name of the most common emotion should be returned. 
       5.2 main.py 
      The program in main.py should ask the user for the file names of the keyword file and 
      comments file that the data will be read from, as well as the name of the report file that will 
      be created. It must use the functions defined in the emotions.py file to perform the tasks 
      described in Section 4 and write the final report. 
       
      Your main.py file must contain the following two functions (ask_user_for_input and main) 
      as specified: 
       
      ask_user_for_input() 
      This function takes no parameters but asks the user to input the file names of the 
      keywords TSV file, the comments CSV file, the country to filter by, and the file name of the 
      report to be generated. These three filenames and the country name are returned in a 
      tuple in this order: 1) keyword filename, 2) comment fflename, 3) country name 
      (converted to lower case), and 4) report filename. 
      Example (of valid input): 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): Canada 
      Input the name of the report file (ending in .txt): report.txt 
       
      User input is shown in green and input prompts in black. Note that the filenames and 
      country are based on the user’s input and can not be hardcoded to one set value. This 
      means that the filenames could be different depending on the values input by the user. 
      In this case the following tuple would be returned: 
      ('keywords.tsv', 'comments.csv', 'canada', 'report.txt') 
      Note that the country name was converted to all lowercase. 
       
      Exceptions 
      Your ask_user_for_input() method must complete the following checks on the user input. 
      If the input does not pass a check, an Exception should be raised causing the function to 
      exit immediately. Exceptions should be raised as soon as the invalid input is given. For example, if the 
      keyword file does not exist, an exception should be raised before asking the user to input 
      the comments file name. 
       
      Check 1: File Extension 
      For each of the three filenames, if the user inputs a filename ending in the wrong file 
      extension (.csv, .tsv, or .txt) the function should raise a ValueError exception with a 
      message stating that the file extension is incorrect such as “Keyword file does not end in 
      .tsv!”. The text of this message must be exactly the following for each file: 
      • Keyword File: “Keyword file does not end in .tsv!” 
      • Comments File: “Comments file does not end in .csv!” 
      • Report File: “Report file does not end in .txt!” 
       
      Check 2: Files Exist 
      For the keyword and comment files you must check if the file exists using the 
      os.path.exists function. If it does not, your function must raise a IOError exception with 
      text explaining that the function does not exist. The message should have the text “<file 
      name> does not exist!” where <file name> is replaced with the filename such as 
      “keywords.tsv does not exist!", where keywords.tsv is the missing file. 
      For the report file, if the file already exists, an IOError should be raised with text stating 
      that “<file name> already exists!” where <file name> is the name of the report file. For 
      example “report.txt already exists!” where the report file is named report.txt. This is to 
      help prevent accidentally overwriting any files. 
       
      Check 3: Valid Country 
      Lastly you must check that the country input is either “all” or one of the following 
      countries: 'bangladesh', 'brazil', 'canada', 'china', 'egypt', 'france', 'germany', 'india', 'iran', 
      'japan', 'mexico', 'nigeria', 'pakistan', 'russia', 'south korea', 'turkey', 'united kingdom', or 
      'united states'. If any other country or word is input, a ValueError should be raised with 
      the text “<country> is not a valid country to filter by!” where <country> is the country the 
      user input. This subset of countries was chosen as they tend to occur in the datasets, we are using 
      more than others. In more realistic scenario you would likely want to include all valid 
      country names in this list, but this assignment limit to the above-mentioned countries. 
      Keep in mind that this only limits the countries a user can filter by, it does not limit what 
      country names can occur in the dataset. 
       
      main() 
      This function handles calling the other functions in main.py and emotions.py to perform 
      the tasks listed in Section 3. It should check for any exceptions being raised by the 
      ask_user_for_input function, output the error message contained in the exception (this 
      can be done by simply printing the exception with print()), and ask the user to input the 
      values again if any exception is raised. 
      Once valid input has been received, it should call the functions from emotions.py 
      required to analyze the comments and generate the report. 
      Lastly it should output to the screen the most common emotion in the comment data set. 
      This should be displayed as “Most common emotion is: <emotion name>” where emotion 
      name is the name of the emotion such as “Most common emotion is: anger” if the 
      emotion is anger. 
      If the make_report function raises a RuntimeError exception (e.g. the comment list was 
      empty), it should output the message contained in that error. 
       
      Example 1: 
      For the values in the attached keywords.tsv and comments.csv files: 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): all 
      Input the name of the report file (ending in .txt): report.txt 
      Most common emotion is: anger 
       
      User input is shown in green and the contents of the outputted report.txt file is: 
      Most common emotion: anger 
       
      Emotion Totals 
      anger: 5 (33.33%) joy: 2 (13.33%) 
      fear: 1 (6.67%) 
      trust: 3 (20.0%) 
      sadness: 3 (20.0%) 
      anticipation: 1 (6.67%) 
       
       
      Example 2: 
      For the same values in keywords.tsv and comments.csv but a country of “Canada”: 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): Canada 
      Input the name of the report file (ending in .txt): report_cad.txt 
      Most common emotion is: sadness 
       
       And the contents of report_cad.txt would be: 
      Most common emotion: sadness 
       
      Emotion Totals 
      anger: 1 (16.67%) 
      joy: 0 (0.0%) 
      fear: 0 (0.0%) 
      trust: 2 (33.33%) 
      sadness: 3 (50.0%) 
      anticipation: 0 (0.0%) 
       
       
      Example 3: 
      In this example invalid inputs are given, and the user is asked to input them again. 
       
      Input keyword file (ending in .tsv): not_a_real_file.tsv 
      Error: not_a_real_file.tsv does not exist! 
       
      Input keyword file (ending in .tsv): real_file_wrong_extension.txt 
      Error: Keyword file does not end in .tsv! 
       
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): not_a_real_file.csv 
      Error: not_a_real_file.csv does not exist!  
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): bad_file_extension.tsv 
      Error: Comment file does not end in .csv! 
       
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): c.csv 
      Input a country to analyze (or "all" for all countries): Duck 
      Error: duck is not a valid country to filter by! 
       
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): c.csv 
      Input a country to analyze (or "all" for all countries): Belgium 
      Error: belgium is not a valid country to filter by! 
       
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): c.csv 
      Input a country to analyze (or "all" for all countries): FrAnCe 
      Input the name of the report file (ending in .txt): report.txt 
      Error: report.txt exists, the report file can not already exist! 
       
      Input keyword file (ending in .tsv): keys.tsv 
      Input comment file (ending in .csv): c.csv 
      Input a country to analyze (or "all" for all countries): FrAnCe 
      Input the name of the report file (ending in .txt): report_france.txt 
      Error: No comments in dataset! 
       
       
      Note that the above is one run of the program. It should keep asking for input again if an 
      exception occurs in the ask_user_for_input function. Also note that in this example, 
      keys.tsv and c.csv are valid files that exist and the file report.txt already exists. “Belgium” 
      is not in the list of valid countries so it is rejected and “FrAnCe” is accepted despite it’s 
      odd capitalization as the ask_user_for_input function should convert it to lowercase. 
      In this example, the c.csv file contained no comments for France, so the exception “No 
      comments in dataset!” was raised by make_report function. 
       6. Templates 
      This section gives some starter code you should use in your program. You may not alter the 
      names of any function or the parameters the functions take (this includes adding or 
      removing parameters). You may not import any libraries or modules not included in the 
      template code and all code you add should be inside a function (adding code outside of a 
      function may cause the Gradescope tests to fail). You may add additional helper functions 
      as needed. 
       
      emotions.py 
      # add a comment here with your name, email, and student number 
      # you can not add any import lines to this file 
      EMOTIONS = ['anger', 'joy', 'fear', 'trust', 'sadness', 'anticipation'] 
       
       
      def clean_text(comment): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      def make_keyword_dict(keyword_file_name): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      def classify_comment_emotion(comment, keywords): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      def make_comments_list(filter_country, comments_file_name): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      def make_report(comment_list, keywords, report_filename): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      main.py 
      # add a comment here with your name, email, and student number. 
      # do not add any additional import lines to this file. 
       
      import os.path 
      from emotions import *  
      VALID_COUNTRIES = ['bangladesh', 'brazil', 'canada', 'china', 'egypt', 
       'france', 'germany', 'india', 'iran', 'japan', 'mexico', 
       'nigeria', 'pakistan', 'russia', 'south korea', 'turkey', 
       'united kingdom', 'united states'] 
       
       
      def ask_user_for_input(): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      def main(): 
       # add your code here and remove the pass keyword on the next line 
       pass 
       
       
      if __name__ == "__main__": 
       main() 
       
      Note About Imports 
      It is important to import the files in the correct order and from the correct files. Main.py 
      should import emotions.py as shown in the template above and not the other way around. 
       
      7. Extra Example 
      The files keywords.tsv and comments.csv should be attached to this assignment on 
      OWL. The result of running them with the following countries is given below: 
       
      Example 1: Country of “All” 
       
      Input/Output: 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): all 
      Input the name of the report file (ending in .txt): my_report.txt 
      Most common emotion is: anger 
       
       
      Contents of my_report.txt: Most common emotion: anger 
       
      Emotion Totals 
      anger: 5 (33.33%) 
      joy: 2 (13.33%) 
      fear: 1 (6.67%) 
      trust: 3 (20.0%) 
      sadness: 3 (20.0%) 
      anticipation: 1 (6.67%) 
       
      Example 2: Country of “brazil” 
      Input/Output: 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): brazil 
      Input the name of the report file (ending in .txt): report_brazil.txt 
      Most common emotion is: fear 
       
      Contents of report_brazil.txt: 
      Most common emotion: fear 
       
      Emotion Totals 
      anger: 0 (0.0%) 
      joy: 0 (0.0%) 
      fear: 1 (50.0%) 
      trust: 0 (0.0%) 
      sadness: 0 (0.0%) 
      anticipation: 1 (50.0%) 
       
      Example 3: Country of “germany” (there are no comments for this country in the data set) 
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): germany 
      Input the name of the report file (ending in .txt): report.txt 
      Error: No comments in dataset! 
       Example 4: Invalid Inputs (these files do not exist or have the wrong extension) 
      Input keyword file (ending in .tsv): badfile.pizza 
      Error: Keyword file does not end in .tsv! 
       
      Input keyword file (ending in .tsv): this_file_does_not_exist.tsv 
      Error: this_file_does_not_exist.tsv does not exist! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): badcsvfile.duck 
      Error: Comment file does not end in .csv! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): not_a_real_csv_file.csv 
      Error: not_a_real_csv_file.csv does not exist! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): not_a_real_country 
      Error: not_a_real_country is not a valid country to filter by! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): JaPaN 
      Input the name of the report file (ending in .txt): badreportfile.exe 
      Error: Report file does not end with .txt! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): JAPAN 
      Input the name of the report file (ending in .txt): already_exists.txt 
      Error: already_exists.txt exists, the report file can not already exist! 
       
      Input keyword file (ending in .tsv): keywords.tsv 
      Input comment file (ending in .csv): comments.csv 
      Input a country to analyze (or "all" for all countries): jApAn 
      Input the name of the report file (ending in .txt): new_report_file.txt 
      Most common emotion is: anger 
       
       8. Non-Functional Specification 
      In addition to the other tasks and specifications given in this document, your program must 
      also fulfill the following requirements: 
       
      1. Your code must be written for Python 3.10 or newer. 
      2. You may not use any modules or third-party libraries not described in this 
      document. Standard built-in functions such as the String, file, and math functions 
      are fine. You should not have to import anything other than your emotions.py and 
      the os.path module. TAs may manually remove marks from your Gradescope test if 
      you violate this rule. 
      3. You must document your code with brief comments. Each file should contain a 
      comment at the top of the file with your name, western e-mail, student number, and 
      a brief description of what is contained in that file. At least one comment should 
      also be given for each function that describes its purpose, parameters, and values 
      returned. You should also include any additional comments to document any lines 
      that may be unclear to the reader. 
      4. Your program must be efficient and terminate within a reasonable time limit. All 
      gradescope test cases (including any hidden cases) must terminate within the 
      autograder’s time limit. 
      5. Assignments are to be done individually and must be your own original work. You 
      may not show or otherwise share your code for this assignment with others or use 
      tools to generate your code for you. Software will be used to detect academic 
      dishonesty (cheating). If you have any questions about what is or is not academic 
      dishonesty, please consult the document on academic dishonesty and ask any 
      questions to your course instructor before submitting this assignment. 
      6. You must follow Python style and coding conventions and good programming 
      techniques, for example: 
      a. Meaningful variable and function names. 
      b. Use a consistent convention for naming variables, constants, and functions 
      (snake case is recommended). 
      c. Readability: indentation, white space, consistency. 
      7. All of your code should be contained in the files main.py and emotions.py. Only 
      submit these files and no others and ensure the filenames match exactly. It is your 
      responsibility to ensure you have submitted the correct files. 
      8. All function names and outputs should follow the specifications given in this 
      document exactly. Not following the specifications may lead to test cases failing. It is your responsibility to ensure you have followed them correctly and your tests are 
      passing. 
      9. Hardcoding or any other attempt to fool Gradescope’s autograder will result in a 
      zero grade for that test being manually assigned and possibly additional penalties. If 
      you have any doubts about what is or is not hardcoding, please ask your instructor 
      by posting to the course forums. 
      10. Frequently backup your work remotely (e.g. using OneDrive) in a way that is secure 
      and private. No extension will be given for lost or corrupted files or submitting 
      incorrect files. 
       
       
      9. Marking and Submission 
      9.1 Submission 
      You must submit the 2 files (main.py and emotions.py) to the Assignment 3 submission 
      page on Gradescope. There are several tests that will automatically run when you upload 
      your files. The result of each test with be displayed to you, but not necessarily the exact 
      details of the test. It is your responsibility to ensure all tests pass before the 
      assignment due date. 
      It is recommended that you create your own test cases to check that the code is working 
      properly for a multitude of different scenarios (some example datasets have been provided 
      for you with this document on OWL). 
      Assignments will not be accepted by email or by any other form other than a Gradescope 
      submission. 
       
       
      9.2 Marking 
      The assignment will be marked as a combination of your auto-graded tests (both visible 
      and hidden tests) and manual grading of your code logic, comments, formatting, style, etc. 
      Marks will be deducted for failing to follow any of the specifications in this document 
      (both functional and nonfunctional), not documenting your code with comments, using 
      poor formatting or style, hardcoding, or naming your files incorrectly. 
       Marking Scheme: 
      • Autograded Tests: 24.5 points 
      • Header comment including your name, student ID, course info, creation date, and 
      description of file: 1.5 points 
      • Descriptive in-line comments throughout code: 1 point 
      • Meaningful variable names: 1 point 
       
      Total: 28 points 
       
       
      9.3 Late Submissions 
      Late assignments will only be accepted up to 3 days late and only if you have enough late 
      coupons remaining (at least one for each day late). If you submit one day late, you will need 
      to use 1 late coupon. 2 days late, 2 late coupons. And 3 days late, 3 late coupons. If you 
      have insufficient late coupons remaining or submit more than 3 days late, you will receive a 
      zero grade on this assignment. 
      It is your responsibility to track your late coupon use. Any values shown on OWL should be 
      considered an estimate and may not be accurate or up to date. 
      Unlimited resubmissions are allowed, but the late penalty will be determined by the 
      date/time of your most recent (last) resubmission. This means if you resubmit past the 
      deadline, your assignment will be considered late. 

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