In the field of artificial intelligence, a confusion matrix is a
visualization tool typically used in supervised learning (in
unsupervised learning it is typically called a matching matrix). Each
column of the matrix represents the instances in a predicted class,
while each row represents the instances in an actual class.
Confusion matrix should be clear, it basically tells how many actual results match the predicted results. For example, see this confusion matrix
c1 - c2
Actual class c1 15 - 3
c2 0 - 2
It tells that:
1 . Column1, row 1 means that the classifier has predicted 15 items as belonging to class c1, and actually 15 items belong to class c1. (which is a correct prediction)
the second column row 1 tells that the classifier has predicted that 3 items belong to class c2, but they actually belong to class c1. (which is a wrong prediction)
Column 1 row 2 means that none of the items that actually belong to class c2 have been predicted to belong to class c1. (which is a wrong prediction)
Column 2 row 2 tells that 2 items that belong to class c2 have been predicted to belong to class c2 (which is a correct prediction).
Now see the formula of Accuracy and Error Rate from your book (Chapter 4, 4.2), and you should be able to clearly understand what is a confusion matrix. It is used to test the accuracy of a classifier using data with known results. The K-Fold method (also mentioned in the book) is one of the methods to calculate the accuracy of a classifier that has also been mentioned in your book.
Now, for Contingency table:
In statistics, a contingency table (also referred to as cross
tabulation or cross tab) is a type of table in a matrix format that
displays the (multivariate) frequency distribution of the variables.
It is often used to record and analyze the relation between two or
more categorical variables.
In data mining, contingency tables are used to show what items appeared in a reading together, like in a transaction or in the shopping-cart of a sales analysis. For example (this is the example from the book you have mentioned)
tea 150 50 200
!tea 650 150 800
800 200 1000
It tells that in 1000 responses (responses about do they like Coffee and tea or both or one of them, results of a survey):
- 150 people like both tea and coffee
- 50 people like tea but do not like coffee
- 650 people do not like tea but like coffee
- 200 people like both tea and coffee
Contingency tables are used to find the Support and Confidence of association rules, basically to evaluate association rules. (read Chapter 6, 6.7.1)
Now the difference is that Confusion Matrix is used to evaluate the performance of a classifier, and it tells how accurate a classifier is in making predictions about classification, and confusion matrix is used to evaluate association rules.
Now after reading the answer, google a bit, (always use google while you are reading your book), read what is in the book, see a few examples, and don't forget to solve a few exercises given in the book, and you should have a clear concept about both of them, and also what to use in a certain situation and why.
Hope this helps.