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I'm teaching myself dynamic programming. It's almost magical. But seriously. Anyway, the problem I worked out was : Given a stairs of N steps and a child who can either take 1, 2, or 3 steps at a time, how many different ways can the child reach the top step?. The problem wasn't too hard, my implementation is below.

import java.util.HashMap;

public class ChildSteps {
    private HashMap<Integer, Integer> waysToStep;

    public ChildSteps() {
        waysToStep = new HashMap<Integer, Integer>();

    public int getNthStep(int n) {
        if (n < 0) return 0; // 0 ways to get to a negative step

        // Base Case
        if (n == 0) return 1;

        // If not yet memorized
        if (!waysToStep.containsKey(n)) {
            waysToStep.put(n, getNthStep(n - 3) + getNthStep(n - 2) + getNthStep(n - 1));

        return waysToStep.get(n);

However, now I want to get the runtime. How should I figure this out? I am familiar (and not much more) with Akra-Bazzi and Master Theorem. Do those apply here?


Here it would seem that it could be: T(N) = 3 * T(???) + O(1) but I'm really not sure.

thanks guys.

share|improve this question
Have you worked out the mathematical equation for this first? –  James Black Feb 2 '12 at 2:17
No, I don't really know how. An equation for what, exactly? –  lollercoaster Feb 2 '12 at 2:20
Given N steps, if you can take m steps at a time, how many different ways can you reach the top. Once you know the equation then you have made this a trivial problem. –  James Black Feb 2 '12 at 2:23
Don't you mean given N steps and can take m or less steps (where m > 0 and m <= N)? that would make more sense in this problem. –  lollercoaster Feb 2 '12 at 2:26
You can look at this for some ideas. I am trying not to do your work for you. saliu.com/permutations.html#Permutation –  James Black Feb 4 '12 at 4:22

1 Answer 1

up vote 1 down vote accepted

In a worst case scenario analysis it would be:

T(N) = N * (containsKey(N) + 8)

Assuming that containsKey = N (it is probably N^2 or Log(N)) then this simplifies to T(N) = N.

You would have to find out the function for containsKey(N) to get the actual equation.

You're really over thinking this though; you don't need to do a algorithm analysis for this. Good quote for you: "Premature optimization is the root of all evil"

share|improve this answer
Could you explain how you go to this line: T(N) = N * (containsKey(N) + 8)? and yeah I'm not really optimizing, I'm just trying to learn how to calculate asymptotic runtimes. –  lollercoaster Feb 3 '12 at 16:06

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