What are the differences between NP vs NPComplete vs NPHard ?
I am aware of many resources all over the web. I'd like to read your explanations, and the reason is they might be different then what's out there, or it's out there and I'm not aware.
What are the differences between NP vs NPComplete vs NPHard ? I am aware of many resources all over the web. I'd like to read your explanations, and the reason is they might be different then what's out there, or it's out there and I'm not aware. 


I assume that you are looking for intuitive definitions (the technical definitions are, well, technical and require quite some time to understand). Let's start by defining NP. Decision problem: A question with a yes or no answer. P: A decision problem that can be solved in polynomial time. That is, given an instance of the problem, the answer yes or no can be decided in polynomial time. Example: Given a graph connected NP: A decision problem where instances of the problem for which the answer is yes have proofs that can be verified in polynomial time. This means that if someone gives us an instance of the problem and a certificate (sometimes called a witness) to the answer being yes, we can check that it is correct in polynomial time. Example: Integer factorization is NP. This is the problem that given integers NPcomplete: An NP problem Example: 3SAT. This is the problem wherein we are given a conjunction of 3clause disjunctions (i.e., statements of the form
where each What makes NPcomplete problems important is that if a deterministic polynomial time algorithm can be found to solve one of them, every NP problem is solvable in polynomial time (one problem to rule them all). NPhard: Intuitively these are the problems that are even harder than the NPcomplete problems. Note that NPhard problems do not have to be in NP (they do not have to be decision problems). The precise definition here is that a problem The halting problem is the classic NPhard problem. This is the problem that given a program P = NP: This the most famous problem in computer science, and one of the most important outstanding questions in the mathematical sciences. In fact, the Clay Institute is offering one million dollars for a solution to the problem (Stephen Cook's writeup on the Clay website is quite good). It's clear that P is a subset of NP. The open question is whether or not NP problems have deterministic polynomial time solutions. It is largely believed that they do not. Here is an outstanding recent article on the latest (and the importance) of the P = NP problem: The Status of the P versus NP problem. The best book on the subject is Computers and Intractability by Garey and Johnson. My favorite NPcomplete problem is the Minesweeper problem. 


I've been looking around and seeing many long explanations. Here is a small chart that may be useful to summarize. Notice how difficulty increases top to bottom: any NP can be reduced to NPComplete and any NPComplete can be reduced to NPHard, all in P time. If you can solve a more difficult class of problem in P time, that will mean you found how to solve all easier problems in P time (for example, proving P = NP if you figure out how to solve any NPComplete problem in P time). ____________________________________________________________  Problem Type  Verifiable in P time  Solvable in P time  Increasing Difficulty ___________________________________________________________   P  Yes  Yes    NP  Yes  Yes or No *    NPComplete  Yes  Unknown    NPHard  Yes or No **  Unknown ***   ____________________________________________________________ V Notes on 'Yes or No' entries:
I also found this diagram quite useful in seeing how all these types correspond to each other (pay more attention to the left half of the diagram). 


This is a very informal answer to the question asked. Can 3233 be written as the product of two other numbers bigger than 1? Is there any way to walk a path around all of the Seven Bridges of Königsberg without taking any bridge twice? These are examples of questions that share a common trait. It may not be obvious how to efficiently determine the answer, but if the answer is 'yes', then there's a short and quick to check proof. In the first case a nontrivial factorization of 51; in the second, a route for walking the bridges (fitting the constraints). A decision problem is a collection of questions with yes or no answers that vary only in one parameter. Say the problem COMPOSITE={"Is Now, some decision problems lend themselves to efficient, if not obvious algorithms. Euler discovered an efficient algorithm for problems like the "Seven Bridges of Königsberg" over 250 years ago. On the other hand, for many decision problems, it's not obvious how to get the answer  but if you know some additional piece of information, it's obvious how to go about proving you've got the answer right. COMPOSITE is like this: Trial division is the obvious algorithm, and it's slow: to factor a 10 digit number, you have to try something like 100,000 possible divisors. But if, for example, somebody told you that 61 is a divisor of 3233, simple long division is a efficient way to see that they're correct. The complexity class NP is the class of decision problems where the 'yes' answers have short to state, quick to check proofs. Like COMPOSITE. One important point is that this definition doesn't say anything about how hard the problem is. If you have a correct, efficient way to solve a decision problem, just writing down the steps in the solution is proof enough. Algorithms research continues, and new clever algorithms are created all the time. A problem you might not know how to solve efficiently today may turn out to have an efficient (if not obvious) solution tomorrow. In fact, it took researchers until 2002 to find an efficient solution to COMPOSITE! With all these advances, one really has to wonder: Is this bit about having short proofs just an illusion? Maybe every decision problem that lends itself to efficient proofs has an efficient solution? Nobody knows. Perhaps the biggest contribution to this field came with the discovery a peculiar class of NP problems. By playing around with circuit models for computation, Stephen Cook found a decision problem of the NP variety that was provably as hard or harder than every other NP problem. An efficient solution for the boolean satisfiability problem could be used to create an efficient solution to any other problem in NP. Soon after, Richard Karp showed that a number of other decision problems could serve the same purpose. These problems, in a sense the "hardest" problems in NP, became known as NPcomplete problems. Of course, NP is only a class of decision problems. Many problems aren't naturally stated in this manner: "find the factors of N", "find the shortest path in the graph G that visits every vertex", "give a set of variable assignments that makes the following boolean expression true". Though one may informally talk about some such problems being "in NP", technically that doesn't make much sense  they're not decision problems. Some of these problems might even have the same sort of power as an NPcomplete problem: an efficient solution to these (nondecision) problems would lead directly to an efficient solution to any NP problem. A problem like this is called NPhard. 


The easiest way to explain P v. NP and such without getting into technicalities is to compare "word problems" with "multiple choice problems". When you are trying to solve a "word problem" you have to find the solution from scratch. When you are trying to solve a "multiple choice problems" you have a choice: either solve it as you would a "word problem", or try to plug in each of the answers given to you, and pick the candidate answer that fits. It often happens that a "multiple choice problem" is much easier than the corresponding "word problem": substituting the candidate answers and checking whether they fit may require significantly less effort than finding the right answer from scratch. Now, if we would agree the effort that takes polynomial time "easy" then the class P would consist of "easy word problems", and the class NP would consist of "easy multiple choice problems". The essence of P v. NP is the question: "Are there any easy multiple choice problems that are not easy as word problems"? That is, are there problems for which it's easy to verify the validity of a given answer but finding that answer from scratch is difficult? Now that we understand intuitively what NP is, we have to challenge our intuition. It turns out that there are "multiple choice problems" that, in some sense, are hardest of them all: if one would find a solution to one of those "hardest of them all" problems one would be able to find a solution to ALL NP problems! When Cook discovered this 40 years ago it came as a complete surprise. These "hardest of them all" problems are known as NPhard. If you find a "word problem solution" to one of them you would automatically find a "word problem solution" to each and every "easy multiple choice problem"! Finally, NPcomplete problems are those that are simultaneously NP and NPhard. Following our analogy, they are simultaneously "easy as multiple choice problems" and "the hardest of them all as word problems". 


I think we can answer it much more succinctly. I answered a related question, and copying my answer from there But first, an NPhard problem is a problem for which we cannot prove that a polynomial time solution exists. NPhardness of some "problemP" is usually proven by converting an already proven NPhard problem to the "problemP" in polynomial time.



P (Polynomial Time) : As name itself suggests, these are the problems which can be solved in polynomial time. NP (Nondeterministicpolynomial Time) : These are the decision problems which can be verified in polynomial time. That means, if I claim that there is a polynomial time solution for a particular problem, you ask me to prove it. Then, I will give you a proof which you can easily verify in polynomial time. These kind of problems are called NP problems. Note that, here we are not talking about whether there is a polynomial time solution for this problem or not. But we are talking about verifying the solution to a given problem in polynomial time. NPHard : These are at least as hard as the hardest problems in NP. If we can solve these problems in polynomial time, we can solve any NP problem that can possibly exist. Note that these problems are not necessarily NP problems. That means, we may/maynot verify the solution to these problems in polynomial time. NPComplete : These are the problems which are both NP and NPHard. That means, if we can solve these problems, we can solve any other NP problem and the solutions to these problems can be verified in polynomial time. 


NPcomplete problems are those problems that are both NPHard and in the complexity class NP. Therefore, to show that any given problem is NPcomplete, you need to show that the problem is both in NP and that it is NPhard. Problems that are in the NP complexity class can be solved nondeterministically in polynomial time and a possible solution (i.e., a certificate) for a problem in NP can be verified for correctness in polynomial time. An example of a nondeterministic solution to the kclique problem would be something like: 1) randomly select k nodes from a graph 2) verify that these k nodes form a clique. The above strategy is polynomial in the size of the input graph and therefore the kclique problem is in NP. Note that all problems deterministically solvable in polynomial time are also in NP. Showing that a problem is NPhard typically involves a reduction from some other NPhard problem to your problem using a polynomial time mapping: http://en.wikipedia.org/wiki/Reduction%5F%28complexity) 


In addition to the other great answers, here is the typical schema people use to show the difference between NP, NPComplete, and NPHard: 


There are really nice answers for this particular question, so there is no point to write my own explanation. So I will try to contribute with an excellent resource about different classes of computational complexity. For someone who thinks that computational complexity is only about P and NP, here is the most exhaustive resource about different computational complexity problems. Apart from problems asked by OP, it listed approximately 500 different classes of computational problems with nice descriptions and also the list of fundamental research papers which describe the class. 


As I understand it, an nphard problem is not "harder" than an npcomplete problem. In fact, by definition, every npcomplete problem is:



These refer to how long it takes a program to run. Problems in class P can be solved with algorithms that run in polynomial time. Say you have an algorithm that finds the smallest integer in an array. One way to do this is by iterating over all the integers of the array and keeping track of the smallest number you've seen up to that point. Every time you look at an element, you compare it to the current minimum, and if it's smaller, you update the minimum. How long does this take? Let's say there are n elements in the array. For every element the algorithm has to perform a constant number of operations. Therefore we can say that the algorithm runs in O(n) time, or that the runtime is a linear function of how many elements are in the array.* So this algorithm runs in linear time. You can also have algorithms that run in quadratic time (O(n^2)), exponential time (O(2^n)), or even logarithmic time (O(log n)). Binary search (on a balanced tree) runs in logarithmic time because the height of the binary search tree is a logarithmic function of the number of elements in the tree. If the running time is some polynomial function of the size of the input**, for instance if the algorithm runs in linear time or quadratic time or cubic time, then we say the algorithm runs in polynomial time and the problem it solves is in class P. NP Now there are a lot of programs that don't (necessarily) run in polynomial time on a regular computer, but do run in polynomial time on a nondeterministic Turing machine. These programs solve problems in NP, which stands for nondeterministic polynomial time. A nondeterministic Turing machine can do everything a regular computer can and more.*** This means all problems in P are also in NP. An equivalent way to define NP is by pointing to the problems that can be verified in polynomial time. This means there is not necessarily a polynomialtime way to find a solution, but once you have a solution it only takes polynomial time to verify that it is correct. Some people think P = NP, which means any problem that can be verified in polynomial time can also be solved in polynomial time and vice versa. If they could prove this, it would revolutionize computer science because people would be able to construct faster algorithms for a lot of important problems. NPhard What does NPhard mean? A lot of times you can solve a problem by reducing it to a different problem. I can reduce Problem B to Problem A if, given a solution to Problem A, I can easily construct a solution to Problem B. (In this case, "easily" means "in polynomial time.") If a problem is NPhard, this means I can reduce any problem in NP to that problem. This means if I can solve that problem, I can easily solve any problem in NP. If we could solve an NPhard problem in polynomial time, this would prove P = NP. NPcomplete A problem is NPcomplete if the problem is both NPhard, and in NP.
** Note that if the input has many different parameters, like n and k, it might be polynomial in n and exponential in k *** Per Xuan Luo's comment, deterministic and nondeterministic Turing machines can compute exactly the same things, since every nondeterministic Turing machine can be simulated by a deterministic Turing machine (a "regular computer"). However, they may compute things in different amounts of time. 


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