# Begining to code Logistic regression in java

I want to code the logistic regression(classification problem) algorithm using java -

Hypothesis is -

Can anyone please tell me what −(−θ to the power T) is?

I was able to code linear regression its hypothesis is which is relatively easy but can not start off with logistic regression.

## 2 Answers

ΘT is the transpose of parameters vector Θ and ΘTx is the linear combination of input features.If you know linear regression then you can think ΘTx as a output of linear regression. Look at the figure below.

The first part is the linear regression. The output of the linear regression is . Since logistic regression is not a regression but a classification problem, your output shouldn't be continuous. Instead you require a binary output for any inputs. For this you need a function that maps the range of input to the value between 0 and 1 so that you can apply some threshold to the output to get the classification. And the suitable function for this would be sigmoid function as you mentioned.

Regrading your question, the output of linear regression can be written as

The term = ΘTx is the vectorized implementation of output of linear regression. So ΘT is nothing but a transpose of parameter vector. This can be understood by following mathematical operations.

For details in logistic regression and coding check this link.

• Also, if you can, check out the Coursera.org archives for Andrew Ng's Machine Learning course. He covers logistic regression in an intuitive way, in my opinion. – arturomp Jan 13 '14 at 12:28

The ΘT represenets transponse of theta matrix. Where theta matrix is matrix of features. When writing code for those algorthms, I strongly advice yout to use first MATLAB or OCTAVE software first for calculating matrices. Then, when you are sure that your algorithm is working correctly implement it in JAVA.

Cheers, Emil