Complexity Theory
Introduction to Computational Theory
Complexity Theory
Over the course of this semester, we have considered many different problems, data structures and algorithms. Aside from knowing what good solutions are to common problems, it is also useful to understand the theoretical aspects of computation. This section of the notes deal with computational theory. Computational theory is actually divided into several branches. This section of the notes will focus on the branch called complexity theory which essentially classifies the difficulty of problems based on the complexity of their solution. The difficulty is based on resource requirements (such as time or space requirements).
There are many complexity classes but for our discussion we are going to be focusing on just a few of these. In particular we are going to look at the computation classes for decision problems. Decision problems are problems where for any given input, you will end up with a "yes" or "no" answer. These are the simplest answers.
Undecidable Problems
Some problems like the halting problems are undecidable. The halting problem is described simply as this... is it possible to write a program that will determine if any program has an infinite loop.
The answer to this question is as follows... suppose that we can write such a program. The program InfiniteCheck will do the following. It will accept as input a program. If the program it accepts gets stuck in an infinite loop it will print "program stuck" and terminate. If the program does terminate, the InfiniteCheck program will go into an infinite loop.
Now, what if we give the InfiniteCheck the program InfiniteCheck as the input for itself.
If this is the case, then if InfiniteCheck has an infinite loop, it will terminate.
If infiniteCheck terminates, it will be stuck in an infinite loop because it terminated.
Both these statements are contradictory. and thus, such a program cannot exist.
P vs NP
P class Problems
P class problems are decision problems that can be solved in polynomial time. Note that linear is polymial time, but so is quadratic... polynomial is essentially where c is a constant. For example, matrix multiplication is a polynomial class problem even though the solution is
NP class Problems
When we talk about "hard" problems then, we aren't talking about the impossible ones like the halting problem. We are instead talking about problems where its possible to find a solution, just that no good solution is currently known.
The NP, in NP class stands for non-deterministic polynomial time. A non-deterministic machine is a machine that has a choice of what action to take after each instruction and furthermore, should one of the actions lead to a solution, it will always choose that action.
A problem is in the NP class if we can verify that a given positive solution to our problem is correct in polynomial time. In other words, you don't have to find the solution in polynomial time, just verify that a solution is correct in polynomial time.
Note that all problems of class P are also class NP.
NP-Complete Problems
A subset of the NP class problems is the NP-complete problems. NP-complete problems are problems where any problem in NP can be polynomially reduced to it. That is, a problem is considered to be NP-complete if it is able to provide a mapping from any NP class problem to it and back.
NP-Hard
A problem is NP-Hard if any NP problem can be mapped to it and back in polynomial time. However, the problem does not need to be NP... that is a solution does not need to be verified in polynomial time.
P vs NP
One of the Millennium Prize Problems is the problem of P vs NP. It essentially asks whether every problem that can be verified in P time is also solvable in P time. In essence are all NP class problem (NP and NP complete) solvable in P time or not. This problem is easiest to visualize with the following diagram from wikipedia:
The problem essentially is asking whether the diagram on the left is true or the diagram on the right is true.
The first diagram basically means that there will some problems that are verifiable in P time but cannot be solved in P time. The second diagram means that any problem that can be verified in P time can also be solved in P time.