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Lists and the Collections Framework
Chapter 2 Lists and the Collections Framework
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Chapter Objectives The List interface Linked list data structures:
Singly-linked Doubly-linked Circular Big-O notation and algorithm efficiency The Iterator interface Implementing Iterator for a linked list Testing strategies The Java Collections framework (hierarchy)
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Introduction A list is a collection of elements, each with a position or index Recursive definition of a list? Iterators facilitate sequential access to lists Classes ArrayList, Vector, and LinkedList are subclasses of abstract class AbstractList and implement the List interface
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Static vs. Dynamic Structures
A static data structure has a fixed size This meaning is different than those associated with the static modifier Arrays are static; once you define the number of elements it can hold, it doesn’t change A dynamic data structure grows and shrinks as required by the information it contains
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List Interface and ArrayList Class (cont.)
Java provides a List interface as part of its API java.util Classes that implement the List interface provide the functionality of an indexed data structure and offer many more operations A sample of the operations: Obtain an element at a specified position Replace an element at a specified position Find a specified target value Add an element at either end Remove an element from either end Insert or removan element at any position Traverse the list structure without managing a subscript All classes introduced in this chapter support these operations, but they do not support them with the same degree of efficiency
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Preliminaries Options for implementing an ADT List Array Linked list
Has a fixed size Data must be shifted during insertions and deletions Linked list Is able to grow in size as needed Does not require the shifting of items during insertions and deletions
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Object References Recall that an object reference is a variable that stores the address of an object A reference can also be called a pointer They are often depicted graphically: student John Smith 40725 3.57
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Object References Figure 4.3a-d
a) Declaring reference variables; b) allocating an object; c) allocating another object, with the dereferenced object marked for garbage collection
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References as Links Object references can be used to create links between objects Suppose a Student class contained a reference to another Student object John Smith 40725 3.57 Jane Jones 58821 3.72
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References as Links References can be used to create a variety of linked structures, such as a linked list: studentList
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Preliminaries Figure 4.1 a) A linked list of integers; b) insertion; c) deletion
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Object References An array of objects
Is actually an array of references to the objects Example Integer[] scores = new Integer[30]; Instantiating Integer objects for each array reference scores[0] = new Integer(7); scores[1] = new Integer(9); // and so on …
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Resizable Arrays The number of references in a Java array is of fixed size Resizable array An array that grows and shrinks as the program executes An illusion that is created by using an allocate and copy strategy with fixed-size arrays java.util.Vector class Uses a similar technique to implement a growable array of objects
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Reference-Based Linked Lists
Contains nodes that are linked to one another A node Contains both data and a “link” to the next item Can be implemented as an object public class Node { private Object item; private Node next; // constructors, accessors, // and mutators … } // end class Node Figure 4.5 A node
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Reference-Based Linked Lists
Using the Node class Node n = new Node (new Integer(6)); Node first = new Node (new Integer(9), n); Figure 4.7 Using the Node constructor to initialize a data field and a link value
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Reference-Based Linked Lists
Data field next in the last node is set to null head reference variable References the list’s first node Always exists even when the list is empty Figure 4.8 A head reference to a linked list
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Reference-Based Linked Lists
head reference variable can be assigned null without first using new Following sequence results in a lost node head = new Node(); // Don’t really need to use new here head = null; // since we lose the new Node object here Figure 4.9 A lost node
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Programming with Linked Lists: Displaying the Contents of a Linked List
curr reference variable References the current node Initially references the first node To display the data portion of the current node System.out.println(curr.getItem()); To advance the current position to the next node curr = curr.getNext();
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Displaying the Contents of a Linked List
Figure 4.10 The effect of the assignment curr = curr.getNext( )
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Displaying the Contents of a Linked List
To display all the data items in a linked list for (Node curr = head; curr != null; curr = curr.getNext()) { System.out.println(curr.getItem()); } // end for
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Deleting a Specified Node from a Linked List
To delete node N which curr references Set next in the node that precedes N to reference the node that follows N prev.setNext(curr.getNext()); Figure 4.11 Deleting a node from a linked list
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Deleting a Specified Node from a Linked List
Deleting the first node is a special case head = head.getNext(); Figure 4.12 Deleting the first node
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Inserting a Node into a Specified Position of a Linked List
To create a node for the new item newNode = new Node(item); To insert a node between two nodes newNode.setNext(curr); prev.setNext(newNode); Figure 4.13 Inserting a new node into a linked list
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Inserting a Node into a Specified Position of a Linked List
To insert a node at the beginning of a linked list newNode.setNext(head); head = newNode; Figure 4.14 Inserting at the beginning of a linked list
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Inserting a Node into a Specified Position of a Linked List
Inserting at the end of a linked list is not a special case if curr is null newNode.setNext(curr); prev.setNext(newNode); Figure 4.15 Inserting at the end of a linked list
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Inserting a Node into a Specified Position of a Linked List
Three steps to insert a new node into a linked list Determine the point of insertion Create a new node and store the new data in it Connect the new node to the linked list by changing references
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Determining curr and prev
Determining the point of insertion or deletion for a sorted linked list of objects for ( prev = null, curr = head; (curr != null) && (newValue.compareTo(curr.getItem()) > 0); prev = curr, curr = curr.getNext() ) { } // end for
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A Reference-Based Implementation of the ADT List
Does not shift items during insertions and deletions Does not impose a fixed maximum length on the list Figure 4.18 A reference-based implementation of the ADT list
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Comparing Array-Based and Referenced-Based Implementations
Size Array-based Fixed size Issues Can you predict the maximum number of items in the ADT? Will an array waste storage? Resizable array Increasing the size of a resizable array can waste storage and time
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Comparing Array-Based and Referenced-Based Implementations
Size (Continued) Reference-based Do not have a fixed size Do not need to predict the maximum size of the list Will not waste storage Storage requirements Array-based Requires less memory than a reference-based implementation There is no need to store explicitly information about where to find the next data item
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Comparing Array-Based and Referenced-Based Implementations
Storage requirements (Continued) Reference-based Requires more storage An item explicitly references the next item in the list Access time Array-based Constant access time The time to access the ith node depends on i
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Comparing Array-Based and Referenced-Based Implementations
Insertion and deletions Array-based Require you to shift the data Reference-based Do not require you to shift the data Require a list traversal
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Passing a Linked List to a Method
A method with access to a linked list’s head reference has access to the entire list When head is an actual argument to a method, its value is copied into the corresponding formal parameter Figure 4.19 A head reference as an argument
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Processing Linked List Recursively
Traversal Recursive strategy to display a list Write the first node of the list Write the list minus its first node Recursive strategies to display a list backward writeListBackward strategy Write the last node of the list Write the list minus its last node backward writeListBackward2 strategy Write the list minus its first node backward
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Processing Linked List Recursively
Insertion Recursive view of a sorted linked list The linked list that head references is a sorted linked list if head is null (the empty list is a sorted linked list) or head.getNext() is null (a list with a single node is a sorted linked list) head.getItem() < head.getNext().getItem(), and head.getNext() references a sorted linked list
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Variations of the Linked List: Tail References
Remembers where the end of the linked list is To add a node to the end of a linked list tail.setNext(new Node(request, null)); Figure 4.22 A linked list with head and tail references
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Circular Linked List Last node references the first node
Every node has a successor Figure 4.23 A circular linked list
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Circular Linked List Figure 4.24
A circular linked list with an external reference to the last node
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Doubly Linked List Each node references both its predecessor and its successor Figure 4.27 A doubly linked list
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Doubly Linked List Circular doubly linked list
precede reference of the head node references the last node next reference of the last node references the head node Eliminates special cases for insertions and deletions
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Doubly Linked List To delete the node that curr references
curr.getPrecede().setNext(curr.getNext()); curr.getNext().setPrecede(curr.getPrecede()); Figure 4.29 Reference changes for deletion
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Doubly Linked List To insert a new node that newNode references before the node referenced by curr newNode.setNext(curr); newNode.setPrecede(curr.getPrecede()); curr.setPrecede(newNode); newNode.getPrecede().setNext(newNode); Figure 4.30 Reference changes for insertion
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Summary Reference variables can be used to implement the data structure known as a linked list Each reference in a linked list is a reference to the next node in the list Algorithms for insertions and deletions in a linked list involve Traversing the list from the beginning until you reach the appropriate position Performing reference changes to alter the structure of the list
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Summary Inserting a new node at the beginning of a linked list and deleting the first node of a linked list are special cases An array-based implementation uses an implicit ordering scheme; a reference-based implementation uses an explicit ordering scheme Any element in an array can be accessed directly; you must traverse a linked list to access a particular node Items can be inserted into and deleted from a reference-based linked list without shifting data
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Summary The new operator can be used to allocate memory dynamically for both an array and a linked list The size of a linked list can be increased one node at a time more efficiently than that of an array A binary search of a linked list is impractical Recursion can be used to perform operations on a linked list The recursive insertion algorithm for a sorted linked list works because each smaller linked list is also sorted
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Summary A tail reference can be used to facilitate locating the end of a list In a circular linked list, the last node references the first node Dummy head nodes eliminate the special cases for insertion into and deletion from the beginning of a linked list A head record contains global information about a linked list A doubly linked list allows you to traverse the list in either direction
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java.util.List Interface and its Implementers
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Algorithm Efficiency and Big-O
Section 2.4
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Algorithm Efficiency and Big-O
Getting a precise measure of the performance of an algorithm is difficult Big-O notation expresses the performance of an algorithm as a function of the number of items to be processed This permits algorithms to be compared for efficiency For more than a certain number of data items, some problems cannot be solved by any computer
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Which is faster – selection sort or insertion sort?
Potential method for evaluation: Implement each as a method and then Time each method to see which is faster Drawbacks Implementation dependant, platform dependant, data dependant
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What are the most important criteria that influence our algorithm implementation choices?
What do each of these criteria directly affect?
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Experimental Studies Write a program implementing the algorithm
Run the program with inputs of varying size and composition Use a method like System.currentTimeMillis() to get an accurate measure of the actual running time Plot the results
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Limitations of Experiments
It is necessary to implement the algorithm, which may be difficult Results may not be indicative of the running time on other inputs not included in the experiment. In order to compare two algorithms, the same hardware and software environments must be used
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Theoretical Analysis Uses a high-level description of the algorithm instead of an implementation Characterizes running time as a function of the input size, n. Takes into account all possible inputs Allows us to evaluate the speed of an algorithm independent of the hardware/software environment
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Asymptotic Analysis Big-O
The goal of asymptotic analysis is to determine the complexity order of an algorithm Big-O Two important rules: Make g(n) as small as possible g(n) never contains unnecessary terms
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Big-Oh Rules If is f(n) a polynomial of degree d, then f(n) is O(nd), i.e., Drop lower-order terms Drop constant factors Use the smallest possible class of functions Say “2n is O(n)” instead of “2n is O(n2)” Use the simplest expression of the class Say “3n + 5 is O(n)” instead of “3n + 5 is O(3n)”
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Figure 9.6 An insertion sort partitions the array into two regions
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Figure 9.7 An insertion sort of an array of five integers.
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Figure 9.4 A selection sort of an array of five integers
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Order of Complexity Exponential Polynomial Log Linear Constant
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Figure 9.3a A comparison of growth-rate functions: a) in tabular form
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Figure 9.3b A comparison of growth-rate functions: b) in graphical form
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Worst case: largest value for any problem of size n
Best case: smallest value for any problem of size n Average case: (weighted) average of all problems of size n
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Figure 9.5 The first two passes of a bubble sort of an array of five integers: a) pass 1; b) pass 2
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Figure 9.11 Levels of recursive calls to mergesort given an array of eight items
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Figure 9.12 A partition about a pivot
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Figure 9.22 Approximate growth rates of time required for eight sorting algorithms
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Testing Section 2.11
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Testing Testing runs a program or part of a program under controlled conditions to verify that results are as expected Testing detects program defects after the program compiles (all syntax error have been removed) While extremely useful, testing cannot detect the absence of all defects in complex programs
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Testing Levels Unit testing: tests the smallest testable piece of the software, often a class or a sufficiently complex method Integration testing: tests integration among units System testing: tests the whole program in the context in which it will be used Acceptance testing: system testing designed to show that a program meets its functional requirements
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Types of Testing Black-box testing:
tests the item (method, class, or program) based on its interfaces and functional requirements is also called closed-box or functional testing is accomplished by varying input parameters across the allowed range and outside the allowed range, and comparing with independently calculated results
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Types of Testing (cont.)
White-box testing: tests the item (method, class, or program) with knowledge of its internal structure is also called glass-box, open-box, or coverage testing exercises as many paths through the element as possible provides appropriate coverage statement – ensures each statement is executed at least once branch – ensures each choice of branch (if , switch, loops) is taken path – tests each path through a method
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Preparations for Testing
A test plan should be developed early in the design stage—the earlier an error is detected, the easier and less expensive it is to correct it Aspects of test plans include deciding: how the software will be tested when the tests will occur who will do the testing what test data will be used
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Testing Tips for Program Systems
Carefully document method operation, parameter, and class attributes using comments; follow Javadoc conventions Leave a trace of execution by displaying the method name as you enter it Display values of all input parameters upon entering a method and values of any class attributes accessed by the method Display values of all method outputs after returning from a method, together with any class attributes that are modified by a method
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Testing Tips for Program Systems (cont.)
An efficient way to display values of parameters, return values, and class attributes: private static final boolean TESTING = true; // or false to // disable if (TESTING) { // Code for output statements } Remove these features when you are satisfied with tye testing results You can define different boolean flags for different tests
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Developing the Test Data
In black-box testing, test data should check for all expected inputs as well as unanticipated data In white-box testing, test data should be designed to ensure all combinations of paths through the code are executed
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Testing Boundary Conditions
Example for (int i = 0; i < x.length; i++) { if (x[i] == target) return i; } Test the boundary conditions (for white-box and black- box testing) when target is: first element (x[0] == target is true) last element (x[length-1] == target is true) not in array (x[i] == target is always false) present multiple times (x[i] == target for more than one value of i)
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Testing Boundary Conditions (cont.)
for (int i = 0; i < x.length; i++) { if (x[i] == target) return i; } Test for the typical situation when target is: somewhere in the middle and for the boundary conditions when the array has only one element no elements
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Testing Boundary Conditions (cont.)
public static void main(String[] args) { int[] x = {5, 12, 15, 4, 8, 12, 7}; // Array to search. // Test for target as first element. verify(x, 5, 0); // Test for target as last element. verify(x, 7, 6); // Test for target not in array. verify(x, -5, -1); // Test for multiple occurrences of target. verify(x, 12, 1); // Test for target somewhere in middle. verify(x, 4, 3); // Test for 1-element array. x = new int[1]; x[0] = 10; verify(x, 10, 0); verify(x, -10, -1); // Test for an empty array. x = new int[0]; verify(x, 10, -1); }
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Testing Boundary Conditions (cont.)
private static void verify(int[] x, int target, int expected) { int actual = search(x, target); System.out.print("search(x, " + target + ") is " + actual + ", expected " + expected); if (actual == expected) System.out.println(": Pass"); else System.out.println(": ****Fail"); }
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Testing Boundary Conditions (cont.)
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Stubs Stubs are method placeholders for methods called by other classes, but not yet implemented Stubs allowing testing as classes are being developed A sample stub: public void save() { System.out.println("Stub for save has been called"); modified = false; }
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Stubs (cont.) Stubs can print out value of inputs
assign predictable values to outputs change the state of variables
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Preconditions and Postconditions
A precondition is a statement of any assumptions or constraints on the input parameters before a method begins execution A postcondition describes the result of executing the method, including any change to the object’s state A method's preconditions and postconditions serve as a contract between a method caller and the method programmer /** Method Save pre: the initial directory contents are read from a data file post: writes the directory contents back to a data file */ public void save() { . . . }
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Drivers Another testing tool A driver program
declares any necessary object instances and variables assigns values to any of the method's inputs (specified by the preconditions) calls the method displays the outputs returned by the method Driver program code can be added to a class's main method (each class can have a main method; only one main method - the one you designate to execute - will run)
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Finally JUnit, a popular program for Java projects, helps you develop testing programs (see Appendix C) Many IDEs are shipped with debugger programs you can use for testing
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Testing OrderedList To test an OrderedList,
store a collection of randomly generated integers in an OrderedList test insertion at beginning of list: insert a negative integer test insertion at end of list: insert an integer larger than any integer in the list create an iterator and iterate through the list, displaying an error if any element is larger than the previous element remove the first element, the last element, and a middle element, then traverse to show that order is maintained
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Testing OrderedList (cont.)
Class TestOrderedList import java.util.*; public class TestOrderedList { /** Traverses ordered list and displays each element. Displays an error message if an element is out of order. @param testList An ordered list of integers */ public static void traverseAndShow(OrderedList<Integer> testList) { int prevItem = testList.get(0); // Traverse ordered list and display any value that // is out of order. for (int thisItem : testList) { System.out.println(thisItem); if (prevItem > thisItem) System.out.println("*** FAILED, value is " + thisItem); prevItem = thisItem; } public static void main(String[] args) { OrderedList<Integer> testList = new OrderedList<Integer>(); final int MAX_INT = 500; final int START_SIZE = 100; (Con’t on next slide)
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Testing OrderedList (cont.)
// Create a random number generator. Random random = new Random(); for (int i = 0; i < START_SIZE; i++) { int anInteger = random.nextInt(MAX_INT); testList.add(anInteger); } // Add to beginning and end of list. testList.add(-1); testList.add(MAX_INT + 1); traverseAndShow(testList); // Traverse and display. // Remove first, last, and middle elements. Integer first = testList.get(0); Integer last = testList.get(testList.size() - 1); Integer middle = testList.get(testList.size() / 2); testList.remove(first); testList.remove(last); testList.remove(middle);
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