What is Machine Learning?
Two definitions of Machine
Learning are offered. Arthur Samuel described it as: "the field of
study that gives computers the ability to learn without being explicitly
programmed." This is an older, informal definition.
Tom Mitchell
provides a more modern definition: "A computer program is said to learn
from experience E with respect to some class of tasks T and performance
measure P, if its performance at tasks in T, as measured by P, improves
with experience E."
Example: playing checkers.
- E = the experience of playing many games of checkers
- T = the task of playing checkers.
- P = the probability that the program will win the next game.
Supervised Learning
In
supervised learning, we are given a data set and already know what our
correct output should look like, having the idea that there is a
relationship between the input and the output.
Supervised learning problems are categorized into "regression" and "classification" problems. In a regression problem, we are trying to predict results within a continuous output, meaning that we are trying to map input variables to some continuous function. In a classification problem, we are instead trying to predict results in a discrete output. In other words, we are trying to map input variables into discrete categories.
Example:
Given data about the size of houses on the real estate market, try to predict their price. Price as a function of size is a continuous output, so this is a regression problem.
We
could turn this example into a classification problem by instead making
our output about whether the house "sells for more or less than the
asking price." Here we are classifying the houses based on price into
two discrete categories.
Unsupervised Learning
Unsupervised
learning, on the other hand, allows us to approach problems with little
or no idea what our results should look like. We can derive structure
from data where we don't necessarily know the effect of the variables.
We can derive this structure by clustering the data based on relationships among the variables in the data.
With
unsupervised learning there is no feedback based on the prediction
results, i.e., there is no teacher to correct you. It’s not just about
clustering. For example, associative memory is unsupervised learning.
Example:
Clustering:
Take a collection of 1000 essays written on the US Economy, and find a
way to automatically group these essays into a small number that are
somehow similar or related by different variables, such as word
frequency, sentence length, page count, and so on.
Associative:
Suppose a doctor over years of experience forms associations in his
mind between patient characteristics and illnesses that they have. If a
new patient shows up then based on this patient’s characteristics such
as symptoms, family medical history, physical attributes, mental
outlook, etc the doctor associates possible illness or illnesses based
on what the doctor has seen before with similar patients. This is not
the same as rule based reasoning as in expert systems. In this case we
would like to estimate a mapping function from patient characteristics
into illnesses.
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