This is not a useful blog, just something I noticed and thought to write down. It's probably been talked about before as well.
Background: Fenwick Tree
The Fenwick tree is a data structure that is commonly used to perform prefix sum queries and point updates on some array $$$A$$$. Leaving the issue of updates aside the general idea is that, for each index $$$i$$$, it stores the sum of A over the range $$$(i-f(i), i]$$$ (yes, that's an open-closed interval), where $$$f(i)$$$ returns the least significant bit of $$$i$$$.
To compute a prefix sum over $$$[1, i_1]$$$ we start with the interval $$$(i_2, i_1]$$$ (where $$$i_2 = i_1-f(i_1)$$$), then we add $$$(i_3, i_2]$$$ (where $$$i_3 = i_2 - f(i_2)$$$), and so on until we cover the entire range. Since each $$$i_{k+1}$$$ has one fewer bit than $$$i_k$$$, this can only happen $$$O(\log i_1)$$$ times in the worst case. Therefore any prefix sum query is computed in $$$O(\log n)$$$ worst case running time.
int fenwick_tree[MAXN];
int prefix(int i) {
int x = 0;
for (; i > 0; i -= f(i)) x += fenwick_tree[i];
return x;
}
It is also easy to compute any range sum query over a range $$$[l, r]$$$ by taking the sum over the prefix $$$[1, r]$$$ and subtracting $$$[1, l-1]$$$.
int range(int l, int r) {
return prefix(r) - prefix(l-1);
}
Generalizing
As presented above, instead of sums, we could compute prefix queries for any associative operation, and we could compute range queries for any associative and commutative operation that has an inverse. The requirement on commutativity can be easily removed at the expense of more memory usage and longer implementation. The requirement of an inverse, however, is inherent to the idea of computing ranges by using two overlapping prefixes but is not really necessary to achieve range queries in some other way.
Range queries without inverse
Given this data structure, there is a simple greedy algorithm for computing range queries over $$$[l, r]$$$:
- if $$$(r - f(r), r]$$$ is contained in $$$[l, r]$$$, accumulate that range and then compute $$$[l, r-f(r)]$$$
- otherwise, accumulate $$$A[r]$$$ and then compute $$$[l, r-1]$$$
It can be shown that this algorithm runs in $$$O(\log(n)^{2})$$$ in the worst case.
I will not write a proof but the intuition is that $$$f(i - f(i))$$$ is twice $$$f(i)$$$ (or zero). That means that in $$$O(\log n)$$$ steps we will cover any interval. We may overshoot, but by that time we will have covered at least half of the interval already, so this process can only happen $$$O(\log n)$$$ times.
The code looks something like this:
int range(int l, int r) {
int x = 0;
while (r-l+1 > 0) {
if (f(r) <= r-l+1) {
x += fenwick_tree[r]; r -= f(r);
} else {
x += A[r]; r -= 1;
}
}
return x;
}
I used the sum operation for clarity, but it also works for any associative operation with an identify element.
int range(int l, int r) {
int x = IDENT;
while (r-l+1 > 0) {
if (f(r) <= r-l+1) {
x = OP(fenwick_tree[r], x); r -= f(r);
} else {
x = OP(A[r], x); r -= 1;
}
}
return x;
}
For instance, we could use it with min operation:
#define IDENT INT_MAX
#define OP min
Conclusion
The Fenwick tree can perform arbitrary range queries on associative operations but if we want to do any kind of updates at all, we will need commutative operations. Also, if we want to perform point-assignment updates -- which is the most common for RMQ among others -- we would need an inverse operation.
It has slow complexity compared to e.g. segment trees, and in practice i tested it to be even slower that the obvious sqrt-decomposition approach.
The only situation where I would use this is if we were forced to use the input array in-place, as the Fenwick tree uses exactly N words of memory and is not that hard to build in-place over an existing array.
Thus I conclude that this is not a useful data structure at all.
It might not be useful but it's cool. I've never seen this idea before at least.
Thanks! <3
O(log(n)) update and query is also possible. https://blog.naver.com/jinhan814/222627110424
Oh yeah I've heard of that! Does it use 2N words of memory?
Yeah, it uses 2N words of memory, so not exactly in-place. But it can be faster than iterative segment tree.
Now that I think about it my algorithm also doesn't work in-place because it needs access to the original array values (at even indices, where
LSB(i) != 1
).https://www.luogu.com.cn/blog/countercurrent-time/qian-tan-shu-zhuang-shuo-zu-you-hua
fwk tree with lazytags, interval changed interval query, persistence and something.
It's not SomethingNew
Whenever I hear someone talk about advanced techniques of Fenwick-trees, I'm always reminded of this comment. It shows how Fenwick-trees are just the left half of a segment tree. This means that you can apply the same techniques to Fenwick-trees as used for segment trees, but you will have to use two Fenwick-trees.