CS165B语言讲解、辅导Programming程序设计、Python编程讲解
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Spring 2021
Machine Problem 1
Due: Thursday, April 22 by 5:00pm PST 2021-04-13
1 Programming Assignment
Write a Python 3 program called pa1.py that implements a three-class linear classifier using the following
method:
Training (using the training data set):
1. Compute the centroid of each class (e.g. A, B, and C).
2. Construct a discriminant function between each pair of classes (e.g. A/B, B/C, and A/C), halfway
between the two centroids and orthogonal to the line connecting the two centroids. This is the “basic
linear classifier” that we have discussed.
Testing (using the testing data set):
1. For each instance, use the discriminant function to decide “A or B” and then (depending on that answer)
to decide “A or C” or “B or C.” (Ties should give priority to class A, then B, then C)
2. Keep track of true positives, true negatives, false positives, and false negatives.
The training and testing data sets are available in this starter package, along with a description of their formats
(PA1-5data.html), hints in PA1-5extra.pdf. You are also given a starter code file called pa1.py. In the pa1.py file
you will find the function
% def run train test(training input, testing input)
This function is where you implement the assignment. Feel free to define additional functions, but DO NOT
change this function signature and DO NOT change the pa1.py module name. We will call this as the entry
point to your code.
As output, the program should return a dictionary of averages over all three classes of the true positive rate,
the false positive rate, the error rate, the accuracy, and the precision:
% print(run train test(training input, testing input))
{ “tpr”: 0.80, # true positive rate
“fpr”: 0.27, # false positive rate
“error rate”: 0.44,
“accuracy”: 0.60,
“precision”: 0.90 }
(Note: These numbers are made up, for purposes of illustration only.) The run train test function should
return results using the same keys as shown.
Information on computing these averages is included in the pa1 starter package.
1.1 Evaluation Instructions
% python evaluate.py
1.2 Submission Instructions
Submit your file pa1.py to Gradescope for assignment MP1.
1
Spring 2021
Machine Problem 1
Due: Thursday, April 22 by 5:00pm PST 2021-04-13
1 Programming Assignment
Write a Python 3 program called pa1.py that implements a three-class linear classifier using the following
method:
Training (using the training data set):
1. Compute the centroid of each class (e.g. A, B, and C).
2. Construct a discriminant function between each pair of classes (e.g. A/B, B/C, and A/C), halfway
between the two centroids and orthogonal to the line connecting the two centroids. This is the “basic
linear classifier” that we have discussed.
Testing (using the testing data set):
1. For each instance, use the discriminant function to decide “A or B” and then (depending on that answer)
to decide “A or C” or “B or C.” (Ties should give priority to class A, then B, then C)
2. Keep track of true positives, true negatives, false positives, and false negatives.
The training and testing data sets are available in this starter package, along with a description of their formats
(PA1-5data.html), hints in PA1-5extra.pdf. You are also given a starter code file called pa1.py. In the pa1.py file
you will find the function
% def run train test(training input, testing input)
This function is where you implement the assignment. Feel free to define additional functions, but DO NOT
change this function signature and DO NOT change the pa1.py module name. We will call this as the entry
point to your code.
As output, the program should return a dictionary of averages over all three classes of the true positive rate,
the false positive rate, the error rate, the accuracy, and the precision:
% print(run train test(training input, testing input))
{ “tpr”: 0.80, # true positive rate
“fpr”: 0.27, # false positive rate
“error rate”: 0.44,
“accuracy”: 0.60,
“precision”: 0.90 }
(Note: These numbers are made up, for purposes of illustration only.) The run train test function should
return results using the same keys as shown.
Information on computing these averages is included in the pa1 starter package.
1.1 Evaluation Instructions
% python evaluate.py
1.2 Submission Instructions
Submit your file pa1.py to Gradescope for assignment MP1.
1