As a School assignment i'm required to implement Naïve Bayes algorithm which i am intending to do in Java.

In trying to understand how its done, i've read the book "Data Mining - Practical Machine Learning Tools and Techniques" which has a section on this topic but am still unsure on some primary points that are blocking my progress.

Since i'm seeking guidance not solution in here, i'll tell you guys what i thinking in my head, what i think is the correct approach and in return ask for correction/guidance which will very much be appreciated. please note that i am an absolute beginner on Naïve Bayes algorithm, Data mining and in general programming so you might see stupid comments/calculations below:

The training data set i'm given has 4 attributes/features that are numeric and normalized(in range[0 1]) using Weka (no missing values)and one nominal class(yes/no)

1) The data coming from a csv file is numeric HENCE

- * Given the attributes are numeric i use PDF (probability density function) formula.

- + To calculate the PDF in java i first separate the attributes based on whether they're in class yes or class no and hold them into different array

`(array class yes and array class no) `

- + Then calculate the mean(

`sum of the values in row / number of values in that row`

) and standard divination for each of the 4 attributes (columns) of each class- + Now to find PDF of a given value(n) i do

`(n-mean)^2/(2*SD^2),`

- + Then to find

`P( yes | E) `

and `P( no | E) `

i `multiply the PDF value of all 4 given attributes and compare which is larger`

, which indicates the class it belongs to In temrs of Java, i'm using `ArrayList of ArrayList`

and `Double `

to store the attribute values.

lastly i'm unsure how to to get new data? Should i ask for input file (like csv) or command prompt and ask for 4 values?

I'll stop here for now (do have more questions) but I'm worried this won't get any responses given how long its got. I will really appreciate for those that give their time reading my problems and comment.