2017-11-09 07:46:37 +00:00
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# Chapter 1
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## Efficiency
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Concerns:
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1. Number of operations
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2. Processor speeds
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3. Storage space
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## Interfaces
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* Interface / abstract data type
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### Queue interface
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* `add(x)` (aka `queue`): add `x` to the queue
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* `remove()` (aka `dequeue`): remove the next value from queue and return it
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* Normal queue: the first element inserted is removed first
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* Priority queue: elements are inserted with a priority, and the smallest
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element is removed. This function is usually called `deleteMin`.
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* LIFO queue: a stack; add and remove are called `push` and `pop`.
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2017-11-09 14:10:20 +00:00
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* Deque: generalisation of these
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* `addFirst(x)`
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* `removeFirst(x)`
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* `addLast(x)`
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* `removeLast(x)`
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* Stack: addFirst, removeFirst
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* Queue: addLast, removeFirst
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### List interface
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The List interface subsumes the Queue interface. A list is just a sequence of
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values, and a Queue becomes a special case of it.
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Interface:
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* size()
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* get(i): get i'th element
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* set(i, x): set the i'th element to x
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* add(i, x): insert x at position i
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* remove(i): remove the i'th element
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### USet (unordered sets)
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USets are a collection of unique items in no particular order; this mimics a
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mathematical set.
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Interface:
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* `size()`: returns the number of elements in the set
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* `add(x)`: add x to the set if it doesn't already exist
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* `remove(x)`: remove x from the set if it doesn't already exist
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* `find(y)`: membership test
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Note that y and x may be distinct objects, and only need to satisfy an
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equality test. For example, a dictionary or hashmap is created using a tuple
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`(key, value)`; `find` compares on `key` and two objects are considered equal
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if their keys match.
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### SSet (sorted set)
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A USet where order matters. Its interface only changes in the `find` function:
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* `find(x)`: find the smallest y s.t. y >= x. thereby returning a useful value
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even if x isn't in the set. AKA successor search.
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2017-12-19 04:30:48 +00:00
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Difference between USet and SSet: sorting requires more steps (run time) and
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complexity. A USet should be used unless an SSet is explicitly required.
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## Mathematical background
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(See notebook).
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## The model of computation
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Proper analysis requires a mathematical model of computation. The model in the
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book is on a w-bit word-RAM model.
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* we can access cells of memory, each of which stores a w-bit word
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* basic operations (arithmetic and logical) take constant time
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* cells can be read or written in constant time
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* the memory manager allows allocating a block of k cells of memory in O(k)
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time
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* size constraint: w >= log(n) where n is the number of elements stored in a
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data structure
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* data structures use a generic type T such that T occupies one word
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## Correctness, time complexity, and space complexity
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Three factors for analysing a data structure:
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* correctness: data structure must implement the interface
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* time complexity: run times of operations on the data structure should
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be as small as possible
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* space complexity: the storage space used by a data structure should be
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as small as possible
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Run times come in three flavours:
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1. Worst-case: an operation never takes longer than this
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2. Amortized: if a data structure has an amortized run time of f(n), then
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a sequence of m operations takes at most m f(n) time.
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3. Expected: the actual run time is a random variable, and the expected
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2017-12-19 07:07:44 +00:00
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value of this run time is at most f(n).
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## Exercises
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1. See src/ch01ex01.cc --- note that the last three exercises were skipped for
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time.
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2. A Dyck word is a sequence of +1’s and -1’s with the property that the
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sum of any prefix of the sequence is never negative. For example,
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+1,−1,+1,−1 is a Dyck word, but +1,−1,−1,+1 is not a Dyck word since the
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prefix +1 − 1 − 1 < 0. Describe any relationship between Dyck words and
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Stack push(x) and pop() operations.
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A +1 corresponds to a push, and a -1 corresponds to a pop. At any point,
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the stack must not overflow.
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3. A matched string is a sequence of {, }, (, ), [, and ] characters that are
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properly matched. For example, “{{()[]}}” is a matched string, but this
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“{{()]}” is not, since the second { is matched with a ]. Show how to use a
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stack so that, given a string of length n, you can determine if it is a
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matched string in O(n) time.
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The program should push each opening character onto a stack. When a closing
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character is encountered, the top of the stack should be the matching
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2017-12-19 19:18:28 +00:00
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opening character. See src/ch01ex03.cc.
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4. Suppose you have a Stack, s, that supports only the push(x)
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and pop() operations. Show how, using only a FIFO Queue, q, you can
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reverse the order of all elements in s.
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2017-12-19 21:53:51 +00:00
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See src/ch01ex04.cc: you just pop each element from the stack → queue,
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then pop the elements off the queue. If you wanted to reverse the stack
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itself, you'd just push the elements back onto the stack.
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2017-12-19 19:18:28 +00:00
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5. Using a USet, implement a Bag. A Bag is like a USet—it supports the add(x),
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remove(x) and find(x) methods—but it allows duplicate elements to be
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stored. The find(x) operation in a Bag returns some element (if any) that
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is equal to x. In addition, a Bag supports the findAll(x) operation that
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returns a list of all elements in the Bag that are equal to x.
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6. From scratch, write and test implementations of the List, USet and SSet
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interfaces. These do not have to be efficient. They can be used later to
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test the correctness and performance of more efficient implementations.
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7. Work to improve the performance of your implementations
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from the previous question using any tricks you can think of. Experiment
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and think about how you could improve the performance of add(i,x) and
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remove(i) in your List implementation. Think about how you could improve
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the performance of the find(x) operation in your USet and SSet
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implementations. This exercise is designed to give you a feel for how
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2017-12-19 21:53:51 +00:00
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difficult it can be to obtain efficient implementations of these interfaces
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