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MachineLearning-Lecture05

Instructor (Andrew Ng) :Okay, good morning. Just one quick announcement and reminder, the project guidelines handout was posted on the course website last week. So if you haven’t yet downloaded it and looked at it, please do so. It just contains the guidelines for the project proposal and the project milestone, and the final project presentation.

So what I want to do today is talk about a different type of learning algorithm, and, in particular, start to talk about generative learning algorithms and the specific algorithm called Gaussian Discriminant Analysis. Take a slight digression, talk about Gaussians, and I’ll briefly discuss generative versus discriminative learning algorithms, and then hopefully wrap up today’s lecture with a discussion of Naive Bayes and the Laplace Smoothing.

So just to motivate our discussion on generative learning algorithms, right, so by way of contrast, the source of classification algorithms we’ve been talking about I think of algorithms that do this. So you’re given a training set, and if you run an algorithm right, we just see progression on those training sets.

The way I think of logistic regression is that it’s trying to find – look at the date and is trying to find a straight line to divide the crosses and O’s, right? So it’s, sort of, trying to find a straight line. Let me – just make the days a bit noisier. Trying to find a straight line that separates out the positive and the negative classes as well as pass the law, right?

And, in fact, it shows it on the laptop. Maybe just use the screens or the small monitors for this. In fact, you can see there’s the data set with logistic regression, and so I’ve initialized the parameters randomly, and so logistic regression is, kind of, the outputting – it’s the, kind of, hypothesis that iteration zero is that straight line shown in the bottom right.

And so after one iteration and creating descent, the straight line changes a bit. After two iterations, three, four, until logistic regression converges and has found the straight line that, more or less, separates the positive and negative class, okay? So you can think of this as logistic regression, sort of, searching for a line that separates the positive and the negative classes.

What I want to do today is talk about an algorithm that does something slightly different, and to motivate us, let’s use our old example of trying to classify the team malignant cancer and benign cancer, right? So a patient comes in and they have a cancer, you want to know if it’s a malignant or a harmful cancer, or if it’s a benign, meaning a harmless cancer.

So rather than trying to find the straight line to separate the two classes, here’s something else we could do. We can go from our training set and look at all the cases of malignant cancers, go through, you know, look for our training set for all the positive examples of malignant cancers, and we can then build a model for what malignant cancer looks like. Then we’ll go for our training set again and take out all of the examples of benign cancers, and then we’ll build a model for what benign cancers look like, okay?

Questions & Answers

what is biology
Hajah Reply
the study of living organisms and their interactions with one another and their environments
AI-Robot
what is biology
Victoria Reply
HOW CAN MAN ORGAN FUNCTION
Alfred Reply
the diagram of the digestive system
Assiatu Reply
allimentary cannel
Ogenrwot
How does twins formed
William Reply
They formed in two ways first when one sperm and one egg are splited by mitosis or two sperm and two eggs join together
Oluwatobi
what is genetics
Josephine Reply
Genetics is the study of heredity
Misack
how does twins formed?
Misack
What is manual
Hassan Reply
discuss biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles
Joseph Reply
what is biology
Yousuf Reply
the study of living organisms and their interactions with one another and their environment.
Wine
discuss the biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles in an essay form
Joseph Reply
what is the blood cells
Shaker Reply
list any five characteristics of the blood cells
Shaker
lack electricity and its more savely than electronic microscope because its naturally by using of light
Abdullahi Reply
advantage of electronic microscope is easily and clearly while disadvantage is dangerous because its electronic. advantage of light microscope is savely and naturally by sun while disadvantage is not easily,means its not sharp and not clear
Abdullahi
cell theory state that every organisms composed of one or more cell,cell is the basic unit of life
Abdullahi
is like gone fail us
DENG
cells is the basic structure and functions of all living things
Ramadan
What is classification
ISCONT Reply
is organisms that are similar into groups called tara
Yamosa
in what situation (s) would be the use of a scanning electron microscope be ideal and why?
Kenna Reply
A scanning electron microscope (SEM) is ideal for situations requiring high-resolution imaging of surfaces. It is commonly used in materials science, biology, and geology to examine the topography and composition of samples at a nanoscale level. SEM is particularly useful for studying fine details,
Hilary
cell is the building block of life.
Condoleezza Reply
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Source:  OpenStax, Machine learning. OpenStax CNX. Oct 14, 2013 Download for free at http://cnx.org/content/col11500/1.4
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