FFT&NTT总结

FFT&NTT总结

一些概念

(DFT:)离散傅里叶变换( ightarrow O(n^2))计算多项式卷积

(FFT:)快速傅里叶变换( ightarrow O(nlogn))计算多项式卷积

(NTT:)快速数论变换( ightarrow)(FFT)的常数优化

(MTT:)(NTT)的一些拓展

FFT

多项式&卷积

(A(x))表示一个(n-1)次多项式

(A(x)=sum_{i=0}^{n-1}a_ix^i)

而卷积就是两个多项式相乘

如果我们像平常那样暴力乘起来,复杂度是(O(n^2))

点值表示法

(n)个点代进(n-1)次多项式(A(x))

则可以确定(n)((x,y))

而我们有(n)个点也可以确定一个(n-1)次多项式

为什么?很(bu)显(hui)然(zheng)啊。

我们后面的(FFT)的优化就是基于这个来的

复数

定义

我们把形如(z=a+bi)(a,b)均为实数)的数称为复数,其中(a)称为实部,(b)称为虚部,(i)称为虚数单位。(摘自百度百科)其中(i^2=-1)

而在复平面中,(x)轴代表实数,(y)轴代表虚数(除原点),从原点((0,0))((a,b))代表复数(a+bi)

模长:((0,0))((a,b))的距离,即(sqrt {a^2+b^2})

幅角:以逆时针为正方向,(x)轴到已知向量的转角的有向角

运算法则

加减法:

和向量一样,即

((a,b)+(c,d)=(a+b,c+d))

((a,b)-(c,d)=(a-b,c-d))

乘法:

几何意义:复数相乘,模长相乘,幅角相加

代数定义:

[(a+bi)*(c+di)\ =ac+adi+cbi+bdi^2\ =ac+adi+cbi-bd\ =(ac-bd)+(ad+bc)i ]

单位根

(下文默认(n)(2)的整数次幂)

在复平面上,以原点为圆心,(1)为半径的圆叫做单位圆。

以原点为起点,圆的(n)等分点为终点,作(n)个向量,设幅角为正且最小的复数向量为(omega _n),称为(n)次单位根。

(n)个向量为(omega_n^1,omega_n^2,omega_n^3...omega_n^{n-1},omega_n^n)((omega_n^n=omega_n^0=1))

如何计算他们的值呢,

可以用欧拉公式:

[omega_n^k=cos;(k*frac{2pi}{n})+i*sin;(k*frac{2pi}{n}) ]

单位根的幅角为周角的(frac 1n)

代数中,若(z^n=1),我们把(z)称为(n)次单位根

性质

1、(omega_n^k=cos;(k*frac{2pi}{n})+i*sin;(k*frac{2pi}{n}))

2、(omega_n^k=omega_{2n}^{2k})

3、(omega_n^{k+frac n2}=-omega_n^k)

4、(omega_n^0=omega_n^n=1)

快速傅里叶变换

我们前面提过,一个(n-1)次多项式可以用(n)个点唯一确定,

我们可以把(0)~(n-1)次单位根依次带入

但仍然是(O(n^2))啊,因为单位根有很多优秀的性质

所以我们来推一波公式

[A(x)=a_0+a_1x+a_2x^2+...+a_{n-1}x^{n-1} ]

按照下表奇偶性分类

[A(x)=(a_0+a_2x^2+a_4x^6+...+a_{n-2}x^{n-2})\ +(a_1+a_3x^3+a_5x^5+...+a_{n-1}x^{n-1}) ]

[A_1(x)=a_0+a_2x+a_4x^2+...+a_{n-2}x^{frac n2-1}\ A_2(x)=a_1+a_3x+a_5x^2+...+a_{n-1}x^{frac n2-1} ]

[A(x)=A_1(x^2)+xA_2(x^2) ]

(omega_n^k(k<frac n2))代入(:A(omega_n^k)=A_1(omega_n^{2k})+omega_n^kA_2(omega_n^{2k}))

(omega_n^{k+frac n2})代入:(A(omega_n^{k+frac n2})=A_1(omega_n^{2k})-omega_n^kA_2(omega_n^{2k}))

发现只有一个符号不一样

于是求第一个式子时,我们可以(O(1))求第二个式子

我们就将这个问题缩小了一半

递归搞下去,就可以(O(nlogn))

快速傅里叶逆变换

真的不想写了2333

跟上面其实差不多,直接看代码吧。。。

下面代码中

FFT(a, -1);
for (int i = 0; i <= M; i++) printf("%d ", (int)(a[i].x / N + 0.5)); 

是快速傅里叶逆变换

代码

#include <iostream>
#include <cstdio>
#include <cstdlib>
#include <cstring> 
#include <cmath> 
#include <algorithm> 
using namespace std;
namespace IO { 
    const int BUFSIZE = 1 << 20; 
    char ibuf[BUFSIZE], *is = ibuf, *it = ibuf; 
    inline char gc() { 
        if (is == it) it = (is = ibuf) + fread(ibuf, 1, BUFSIZE, stdin); 
        return *is++; 
    } 
} 
inline int gi() {
    register int data = 0, w = 1;
    register char ch = 0;
    while (!isdigit(ch) && ch != '-') ch = IO::gc(); 
    if (ch == '-') w = -1, ch = IO::gc();
    while (isdigit(ch)) data = 10 * data + ch - '0', ch = IO::gc(); 
    return w * data; 
}
const double PI = acos(-1.0); 
const int MAX_N = 3e6 + 5; 
struct Complex { double x, y; } a[MAX_N], b[MAX_N]; 
Complex operator + (const Complex &a, const Complex &b) { return (Complex){a.x + b.x, a.y + b.y}; } 
Complex operator - (const Complex &a, const Complex &b) { return (Complex){a.x - b.x, a.y - b.y}; } 
Complex operator * (const Complex &a, const Complex &b) { return (Complex){a.x * b.x - a.y * b.y, a.x * b.y + a.y * b.x}; }
int N, M, P, r[MAX_N]; 
void FFT(Complex *p, int op) {
    for (int i = 0; i < N; i++) if (i < r[i]) swap(p[i], p[r[i]]); 
    for (int i = 1; i < N; i <<= 1) {
        Complex rot = (Complex){cos(PI / i), op * sin(PI / i)}; 
        for (int j = 0; j < N; j += (i << 1)) { 
            Complex w = (Complex){1, 0}; 
            for (int k = 0; k < i; ++k, w = w * rot) {
                Complex x = p[j + k], y = w * p[j + k + i]; 
                p[j + k] = x + y, p[j + k + i] = x - y; 
            } 
        } 
    } 
} 
int main () {
    N = gi(), M = gi(); 
    for (int i = 0; i <= N; i++) a[i].x = gi(); 
    for (int i = 0; i <= M; i++) b[i].x = gi(); 
    for (M += N, N = 1; N <= M; N <<= 1, ++P) ; 
    for (int i = 0; i < N; i++) r[i] = (r[i >> 1] >> 1) | ((i & 1) << (P - 1)); 
    FFT(a, 1), FFT(b, 1); 
    for (int i = 0; i < N; i++) a[i] = a[i] * b[i]; 
    FFT(a, -1);
    for (int i = 0; i <= M; i++) printf("%d ", (int)(a[i].x / N + 0.5)); 
    return 0; 
} 

NTT

其实和(FFT)差不多啦,

就是把单位根换为原根就行了

代码

#include <iostream>
#include <cstdio>
#include <cstdlib>
#include <cstring> 
#include <cmath> 
#include <algorithm>
using namespace std; 
inline int gi() {
    register int data = 0, w = 1;
    register char ch = 0;
    while (!isdigit(ch) && ch != '-') ch = getchar(); 
    if (ch == '-') w = -1, ch = getchar();
    while (isdigit(ch)) data = 10 * data + ch - '0', ch = getchar();
    return w * data; 
}
const int MAX_N = 3e6 + 5, Mod = 998244353, G = 3, iG = 332748118; 
int fpow(int x, int y) { 
    int res = 1; 
    while (y) {
        if (y & 1) res = 1ll * res * x % Mod; 
        x = 1ll * x * x % Mod; 
        y >>= 1; 
    }
    return res; 
} 
int Limit = 1, r[MAX_N]; 
void NTT(int *p, int op) {
    for (int i = 0; i < Limit; i++) if (i < r[i]) swap(p[i], p[r[i]]); 
    for (int i = 1; i < Limit; i <<= 1) {
        int rot = fpow(op == 1 ? G : iG, (Mod - 1) / (i << 1)); 
        for (int j = 0, pls = (i << 1); j < Limit; j += pls) { 
            int w = 1; 
            for (int k = 0; k < i; k++, w = 1ll * w * rot % Mod) { 
                int x = p[j + k], y = 1ll * w * p[i + k + j] % Mod; 
                p[j + k] = (x + y) % Mod, p[i + j + k] = (x - y + Mod) % Mod; 
            } 
        } 
    } 
}
int N, M, a[MAX_N], b[MAX_N]; 
int main () {
    N = gi(), M = gi(); 
    for (int i = 0; i <= N; i++) a[i] = (gi() + Mod) % Mod; 
    for (int i = 0; i <= M; i++) b[i] = (gi() + Mod) % Mod;
    int L = 0; 
    while (Limit <= N + M) Limit <<= 1, ++L; 
    for (int i = 0; i < Limit; i++) r[i] = (r[i >> 1] >> 1) | ((i & 1) << (L - 1)); 
    NTT(a, 1), NTT(b, 1); 
    for (int i = 0; i < Limit; i++) a[i] = 1ll * a[i] * b[i] % Mod; 
    NTT(a, -1); 
    int inv = fpow(Limit, Mod - 2);
    for (int i = 0; i <= N + M; i++) printf("%lld ", (1ll * a[i] * inv) % Mod);
    return 0; 
} 
原文地址:https://www.cnblogs.com/heyujun/p/10211145.html