Decision tree learning for cancer diagnosis, Computer Engineering

Assignment Help:

Assignment 1: Decision tree learning for cancer diagnosis

In this mini-project, you will implement a decision-tree algorithm and apply it to breast cancer diagnosis. For each patient, an image of a fine needle aspirate (FNA) of a breast mass was taken, and nine features in the image potentially correlated with breast cancer were extracted. Your task is to develop a decision tree algorithm, learn from data, and predict for new patients whether they have breast cancer. Dataset can be downloaded from U.C. Irvine Machine Learning Repository.

1.       Collect the data set from my website. Each patient is represented by one line, with columns separated by commas: the first one is the identifier number, the last is the class (benign or malignant), the rest are attribute values, which are integers ranging from 1 to 10. The attributes are (in case you are curious): Clump Thickness, Uniformity of Cell Size, Uniformity of Cell Shape, Marginal Adhesion, Single Epithelial Cell Size, Bare Nuclei, Bland Chromatin, Normal Nucleoli, Mitoses. (Note that the UCI document page specifies a different number of attributes, because it refers to a set of several related datasets. For detailed information of the dataset that we use here, see this document.)

2.       Implement the ID3 decision tree learner, as described in Chapter 3 of Mitchell. You may program in C/C++, Java. Your program should assume input in the above format.

3.       Implement both misclassification impurity and information gain for evaluation criterion. Also, implement split stopping using chi-square test.

4.       Divide the data set randomly between training (80%) and testing (20%) sets. Use your algorithm to train a decision tree classifier and report accuracy on test. Run the same experiment 100 times. Then calculate average test performances (accuracy, precision, recall, f-measure, g-mean).

5.       Compare performances by varying the evaluation criteria. Make a table as follows:

Evaluation Criteria

Accuracy

Precision

Recall

F-measure

G-mean

misclassification impurity

 

 

 

 

 

information gain

 

 

 

 

 

6.       Answer the following:

a.       Which evaluation criterion and confidence level work well? Why?

b.       Do you see evidence of overfitting in some experiments? Explain.

 


Related Discussions:- Decision tree learning for cancer diagnosis

Iterative deepening search, Iterative Deepening Search: So, breadth fi...

Iterative Deepening Search: So, breadth first search is always guaranteed to find a solution (if one exists), actually it eats all the memory. For the depth first search, ther

Illustrate benefits of register addressing mode, Q. Illustrate benefits of ...

Q. Illustrate benefits of register addressing mode? The key benefits of register addressing are: Register access is faster than memory access and henceforth register add

Explain working of digital camera, Q. Explain working of Digital camera? ...

Q. Explain working of Digital camera? A Digital camera is a camera which captures and stores still images and video (Digital Video Cameras) as digital data in place of on photo

What is actor, What is actor? An actor is a direct external user of a s...

What is actor? An actor is a direct external user of a system. Every actor shows objects that behave in a particular way towards systems. Actors are directly linked to system.

Explain basic cpu structure, A computer manipulates data consistent with in...

A computer manipulates data consistent with instructions of a stored program. Stored program means that the data and program are stored in same memory unit. Central processing unit

Find out the hexadecimal sum, Find the hex sum of (93) 16 + (DE) 16 ? Ans...

Find the hex sum of (93) 16 + (DE) 16 ? Ans. Hex Sum of (93) 16 + (DE) 16 Convert Hexadecimal numbers 93 and DE to there binary equivalent demonstrated below:- Hence (9

Callable modules of program code within one abap/4 program, How can we crea...

How can we create callable modules of program code within one ABAP/4 program? We can create callable modules by two techniques:- By defining Macros. By creating incl

Overflow or underflow for floating point numbers, In floating point numbers...

In floating point numbers when so you say that an overflow or underflow has occurred? Ans: A) In single precision numbers when an exponent is less than +127 then we say that

First-order inference rules, First-Order Inference Rules: Here now we ...

First-Order Inference Rules: Here now we have a clear definition of a first-order model is that we can define soundness for first-order inference rules in the same way such we

Responsibilities of application layer, Application layer: It's the topmost...

Application layer: It's the topmost layer in OSI model, which allows the user to access network. This layer provides user interface for network applications like remote login, Wor

Write Your Message!

Captcha
Free Assignment Quote

Assured A++ Grade

Get guaranteed satisfaction & time on delivery in every assignment order you paid with us! We ensure premium quality solution document along with free turntin report!

All rights reserved! Copyrights ©2019-2020 ExpertsMind IT Educational Pvt Ltd