Example calculation of entropy, Computer Engineering

Assignment Help:

Example Calculation:

If we see an example we are working with a set of examples like S = {s1,s2,s3,s4} categorised with a binary categorisation of positives and negatives like that s1  is positive and the rest are negative. Expect further there that we want to calculate the information gain of an attribute, A, and  A can take the values {v1,v2,v3} obviously. So lat in finally assume that as: 

1745_Example Calculation of Entropy.png

Whether to work out the information gain for A relative to S but we first use to calculate the entropy of S. Means that to use our formula for binary categorisations that we use to know the proportion of positives in S and the proportion of negatives. Thus these are given such as: p+ = 1/4 and p- = 3/4. So then we can calculate as: 

Entropy(S) = -(1/4)log2(1/4) -(3/4)log2(3/4) = -(1/4)(-2) -(3/4)(-0.415) = 0.5 + 0.311

= 0.811 

Now next here instantly note that there to do this calculation into your calculator that you may need to remember that as: log2(x) = ln(x)/ln(2), when ln(2) is the natural log of 2. Next, we need to calculate the weighted Entropy(Sv) for each value v = v1, v2, v3, v4, noting that the weighting involves multiplying by (|Svi|/|S|). Remember also that Sv  is the set of examples from S which have value v for attribute A. This means that:  Sv1 = {s4}, sv2={s1, s2}, sv3 = {s3}. 

We now have need to carry out these calculations: 

(|Sv1|/|S|) * Entropy(Sv1) = (1/4) * (-(0/1)log2(0/1) - (1/1)log2(1/1)) = (1/4)(-0 -

(1)log2(1)) = (1/4)(-0 -0) = 0 

(|Sv2|/|S|) * Entropy(Sv2) = (2/4) * (-(1/2)log2(1/2) - (1/2)log2(1/2))

                                      = (1/2) * (-(1/2)*(-1) - (1/2)*(-1)) = (1/2) * (1) = 1/2 

(|Sv3|/|S|) * Entropy(Sv3) = (1/4) * (-(0/1)log2(0/1) - (1/1)log2(1/1)) = (1/4)(-0 -

(1)log2(1)) = (1/4)(-0 -0) = 0 

Note that we have taken 0 log2(0) to be zero, which is standard. In our calculation,

we only required log2(1) = 0 and log2(1/2) =  -1. We now have to add these three values together and take the result from our calculation for Entropy(S) to give us the final result: 

Gain(S,A) = 0.811 - (0 + 1/2 + 0) = 0.311 

Now we look at how information gain can be utilising in practice in an algorithm to construct decision trees.


Related Discussions:- Example calculation of entropy

Computer Fundamentals, state and explain the advantages of having densely ...

state and explain the advantages of having densely packed integrated Circuits in the computer

What is artificial intelligence neural networks, For the sake of trying to ...

For the sake of trying to make intelligent behavior though really all that's being done is work with artificial neural networks where every cell is a very easy processor and the go

Messagebox with the message, We have to make an application that will dynam...

We have to make an application that will dynamically add a menu strip with menu items to a form(ie NOT dragged and dropped onto the form) in Visual Basic. The menu strip should be

Assembly directives and pseudo-ops, Assembly directives and pseudo-ops: ...

Assembly directives and pseudo-ops: Assembly directives are which instructions that executed by the assembler at assembly time, not by the CPU at run time. They can build the

Can gimp install its own colormap, Yes. In either the system-wide gimprc...

Yes. In either the system-wide gimprc file or your personal gimprc file, uncomment the line that have install-colormap.

Mapping, what is transform mapping and transaction mapping?

what is transform mapping and transaction mapping?

Explain how presentation layer helps in establishing, Explain how presentat...

Explain how presentation layer helps in establishing and processing data in End to End layers. The idea of the presentation layer is to stand for information to the communicati

What is indirect addressing mode explain, Q. What is Indirect Addressing Mo...

Q. What is Indirect Addressing Mode explain? Indirect Addressing Mode In the indirect addressing modes operands employ registers to point to locations in memory. So it is

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