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159 lines
5.4 KiB
Markdown
159 lines
5.4 KiB
Markdown
---
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id: bottom-up-dp
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slug: /recursion/pyramid-slide-down/bottom-up-dp
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title: Bottom-up DP solution
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description: |
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Bottom-up DP solution of the Pyramid Slide Down.
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tags:
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- java
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- dynamic-programming
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- bottom-up-dp
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last_update:
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date: 2023-08-17
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---
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# Bottom-up dynamic programming
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If you try to think in depth about the top-down DP solution, you might notice
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that the _core_ of it stands on caching the calculations that have been already
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done on the lower “levels” of the pyramid. Our bottom-up implementation will be
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using this fact!
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:::tip
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As I have said in the _top-down DP_ section, it is the easiest way to implement
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DP (unless the cached function has complicated parameters, in that case it might
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get messy).
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Bottom-up dynamic programming can be more effective, but may be more complicated
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to implement right from the beginning.
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:::
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Let's see how we can implement it:
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```java
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public static int longestSlideDown(int[][] pyramid) {
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// In the beginning we declare new array. At this point it is easier to just
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// work with the one dimension, i.e. just allocating the space for the rows.
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int[][] slideDowns = new int[pyramid.length][];
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// Bottom row gets just copied, there's nothing else to do… It's the base
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// case.
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slideDowns[pyramid.length - 1] = Arrays.copyOf(pyramid[pyramid.length - 1],
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pyramid[pyramid.length - 1].length);
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// Then we need to propagate the found slide downs for each of the levels
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// above.
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for (int y = pyramid.length - 2; y >= 0; --y) {
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// We start by copying the values lying in the row we're processing.
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// They get included in the final sum and we need to allocate the space
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// for the precalculated slide downs anyways.
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int[] row = Arrays.copyOf(pyramid[y], pyramid[y].length);
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// At this we just need to “fetch” the partial results from “neighbours”
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for (int x = 0; x < row.length; ++x) {
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// We look under our position, since we expect the rows to get
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// shorter, we can safely assume such position exists.
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int under = slideDowns[y + 1][x];
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// Then we have a look to the right, such position doesn't have to
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// exist, e.g. on the right edge, so we validate the index, and if
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// it doesn't exist, we just assign minimum of the ‹int› which makes
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// sure that it doesn't get picked in the ‹Math.max()› call.
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int toRight = x + 1 < slideDowns[y + 1].length
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? slideDowns[y + 1][x + 1]
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: Integer.MIN_VALUE;
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// Finally we add the best choice at this point.
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row[x] += Math.max(under, toRight);
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}
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// And save the row we've just calculated partial results for to the
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// “table”.
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slideDowns[y] = row;
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}
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// At the end we can find our seeked slide down at the top cell.
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return slideDowns[0][0];
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}
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```
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I've tried to explain the code as much as possible within the comments, since it
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might be more beneficial to see right next to the “offending” lines.
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As you can see, in this approach we go from the other side[^1], the bottom of
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the pyramid and propagate the partial results up.
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:::info How is this different from the _greedy_ solution???
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If you try to compare them, you might find a very noticable difference. The
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greedy approach is going from the top to the bottom without **any** knowledge of
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what's going on below. On the other hand, bottom-up DP is going from the bottom
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(_DUH…_) and **propagates** the partial results to the top. The propagation is
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what makes sure that at the top I don't choose the best **local** choice, but
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the best **overall** result I can achieve.
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:::
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## Time complexity
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Time complexity of this solution is rather simple. We allocate an array for the
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rows and then for each row, we copy it and adjust the partial results. Doing
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this we get:
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$$
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\mathcal{O}(rows + 2n)
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$$
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Of course, this is an upper bound, since we iterate through the bottom row only
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once.
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## Memory complexity
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We're allocating an array for the pyramid **again** for our partial results, so
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we get:
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$$
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\mathcal{O}(n)
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$$
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:::tip
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If we were writing this in C++ or Rust, we could've avoided that, but not
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really.
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C++ would allow us to **copy** the pyramid rightaway into the parameter, so we
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would be able to directly change it. However it's still a copy, even though we
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don't need to allocate anything ourselves. It's just implicitly done for us.
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Rust is more funny in this case. If the pyramids weren't used after the call of
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`longest_slide_down`, it would simply **move** them into the functions. If they
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were used afterwards, the compiler would force you to either borrow it, or
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_clone-and-move_ for the function.
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---
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Since we're doing it in Java, we get a reference to the _original_ array and we
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can't do whatever we want with it.
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:::
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# Summary
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And we've finally reached the end. We have seen 4 different “solutions”[^2] of
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the same problem using different approaches. Different approaches follow the
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order in which you might come up with them, each approach influences its
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successor and represents the way we can enhance the existing implementation.
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---
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:::info source
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You can find source code referenced in the text
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[here](pathname:///files/algorithms/recursion/pyramid-slide-down.tar.gz).
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:::
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[^1]: definitely not an RHCP reference :wink:
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[^2]: one was not correct, thus the quotes
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