Ryanlyt / algorithm-learning

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9.14 #6

Open Ryanlyt opened 1 year ago

Ryanlyt commented 1 year ago

_c945dcb075a924fda0b036e9abd9c742_422340986_Screenshot_2023-09-14-01-07-58-231_com alicloud databox

朴素dijkstra算法

O(n^2 + m)

int g[N][N];  // 存储每条边
int dist[N];  // 存储1号点到每个点的最短距离
bool st[N];   // 存储每个点的最短路是否已经确定

// 求1号点到n号点的最短路,如果不存在则返回-1
int dijkstra()
{
    memset(dist, 0x3f, sizeof dist);
    dist[1] = 0;

    for (int i = 0; i < n - 1; i ++ )
    {
        int t = -1;     // 在还未确定最短路的点中,寻找距离最小的点
        for (int j = 1; j <= n; j ++ )
            if (!st[j] && (t == -1 || dist[t] > dist[j]))
                t = j;

        // 用t更新其他点的距离
        for (int j = 1; j <= n; j ++ )
            dist[j] = min(dist[j], dist[t] + g[t][j]);

        st[t] = true;
    }

    if (dist[n] == 0x3f3f3f3f) return -1;
    return dist[n];
}

_a5d8b9d89c1c938c844caccefe037f05_-273366807_Screenshot_2023-09-14-01-11-08-995_com alicloud databox _a95757059c796880bf3c0dc4d001fbe0_542661298_Screenshot_2023-09-14-01-13-13-136_com alicloud databox

_369f24b28e2cfd52c9d55209dc492544_657257481_Screenshot_2023-09-14-01-20-59-645_com alicloud databox _6f7d767161f648b97da661b691e63876_-1888476011_Screenshot_2023-09-14-01-24-53-720_com alicloud databox _0a16115663d20205245cdf0488fac737_1632666418_Screenshot_2023-09-14-01-26-51-969_com alicloud databox _26ec78fab44fab1d09f6b0e24aaaebd3_-91668875_Screenshot_2023-09-14-01-30-40-266_com alicloud databox _f337cdab64f836591a3e617c3ec33272_626994539_Screenshot_2023-09-14-01-37-49-516_com alicloud databox _cc35e6111ec58c7ce5425c5e69b4f8db_-745764295_Screenshot_2023-09-14-01-41-52-162_com alicloud databox _30f6a638799835a23a2be36351c199c9_1450807772_Screenshot_2023-09-14-01-45-42-294_com alicloud databox

Ryanlyt commented 1 year ago

堆优化版dijkstra

O(mlogn)

typedef pair<int, int> PII;

int n;      // 点的数量
int h[N], w[N], e[N], ne[N], idx;       // 邻接表存储所有边
int dist[N];        // 存储所有点到1号点的距离
bool st[N];     // 存储每个点的最短距离是否已确定

// 求1号点到n号点的最短距离,如果不存在,则返回-1
int dijkstra()
{
    memset(dist, 0x3f, sizeof dist);
    dist[1] = 0;
    priority_queue<PII, vector<PII>, greater<PII>> heap;
    heap.push({0, 1});      // first存储距离,second存储节点编号

    while (heap.size())
    {
        auto t = heap.top();
        heap.pop();

        int ver = t.second, distance = t.first;

        if (st[ver]) continue;
        st[ver] = true;

        for (int i = h[ver]; i != -1; i = ne[i])
        {
            int j = e[i];
            if (dist[j] > distance + w[i])
            {
                dist[j] = distance + w[i];
                heap.push({dist[j], j});
            }
        }
    }

    if (dist[n] == 0x3f3f3f3f) return -1;
    return dist[n];
}

_7d587951f8946e7aeb6e1ea2c53703f7_-1387094643_Screenshot_2023-09-14-01-58-31-707_com alicloud databox _5dd721727f6c2368995a19736ca172ca_-869181871_Screenshot_2023-09-14-01-58-38-289_com alicloud databox _e83fda1805993b4dcf1ab52e6b2bfada_-466937506_Screenshot_2023-09-14-01-58-41-185_com alicloud databox

Ryanlyt commented 1 year ago

Bellman-Ford算法

O(nm) 迭代次数有意义:迭代k次,意思是最多经过不超过k条边的最短路径

注意:如果要求不能超过k条边,要备份backup,因为可能发生串联(memcpy(backup, dist, sizeof dist);)

注意在模板题中需要对下面的模板稍作修改,加上备份数组,详情见模板题。
int n, m;       // n表示点数,m表示边数
int dist[N];        // dist[x]存储1到x的最短路距离

struct Edge     // 边,a表示出点,b表示入点,w表示边的权重
{
    int a, b, w;
}edges[M];

// 求1到n的最短路距离,如果无法从1走到n,则返回-1。
int bellman_ford()
{
    memset(dist, 0x3f, sizeof dist);
    dist[1] = 0;

    // 如果第n次迭代仍然会松弛三角不等式,就说明存在一条长度是n+1的最短路径,由抽屉原理,路径中至少存在两个相同的点,说明图中存在负权回路。
    for (int i = 0; i < n; i ++ )
    {
        for (int j = 0; j < m; j ++ )
        {
            int a = edges[j].a, b = edges[j].b, w = edges[j].w;
            if (dist[b] > dist[a] + w)
                dist[b] = dist[a] + w;
        }
    }

    if (dist[n] > 0x3f3f3f3f / 2) return -1;
    return dist[n];
}

_267f8710ce793c8ed2412a8d58c62808_-1341972972_Screenshot_2023-09-14-10-14-58-400_com alicloud databox _de8121fd4be780ef9e1aa4b42ac8b9d8_75008884_Screenshot_2023-09-14-10-19-27-612_com alicloud databox _ee90e5fec0a29f51f986eeb7d61ef024_-1822421675_Screenshot_2023-09-14-10-29-16-984_com alicloud databox _3850b40fefe78343af13e8779b0d677e_1737419654_Screenshot_2023-09-14-10-45-08-605_com alicloud databox _d74d2d0f1f45530f46c8dc8a7b3d76ee_2059666737_Screenshot_2023-09-14-10-44-56-303_com alicloud databox _64223922c6202afda546a085df1c746a_713033802_Screenshot_2023-09-14-10-43-32-938_com alicloud databox

Ryanlyt commented 1 year ago

spfa 算法(队列优化的Bellman-Ford算法)

时间复杂度 平均情况下O(m),最坏情况下O(nm),n表示点数,m表示边数 一般算法题99%的情况下都不会出现负环 基本思想:更新过谁,再拿谁来更新别人

int n;      // 总点数
int h[N], w[N], e[N], ne[N], idx;       // 邻接表存储所有边
int dist[N];        // 存储每个点到1号点的最短距离
bool st[N];     // 存储每个点是否在队列中

// 求1号点到n号点的最短路距离,如果从1号点无法走到n号点则返回-1
int spfa()
{
    memset(dist, 0x3f, sizeof dist);
    dist[1] = 0;

    queue<int> q;
    q.push(1);
    st[1] = true;

    while (q.size())
    {
        auto t = q.front();
        q.pop();

        st[t] = false;

        for (int i = h[t]; i != -1; i = ne[i])
        {
            int j = e[i];
            if (dist[j] > dist[t] + w[i])
            {
                dist[j] = dist[t] + w[i];
                if (!st[j])     // 如果队列中已存在j,则不需要将j重复插入
                {
                    q.push(j);
                    st[j] = true;
                }
            }
        }
    }

    if (dist[n] == 0x3f3f3f3f) return -1;
    return dist[n];
}

spfa可以解决有负权问题,也可以解决没有负权问题,效率还比迪杰斯特拉算法快(但有被卡风险) _44ca1d3c0192f6ebd5e983205aa42a0e_-1670130156_Screenshot_2023-09-14-10-45-32-798_com alicloud databox _0d49fcfec594911f1204c9b3f61878cf_6838105_Screenshot_2023-09-14-10-46-26-382_com alicloud databox _fcceff7c2ab81ea28056efe36a11cb53_-1960470701_Screenshot_2023-09-14-10-46-30-318_com alicloud databox _6fc4277e2cd3ace1bd29b6812256ae6c_1934420530_Screenshot_2023-09-14-10-50-58-174_com alicloud databox _b39164ec9bfafd1ad5a3f75f3537bdee_1405251631_Screenshot_2023-09-14-10-51-03-222_com alicloud databox _45f58b38ce74f9cebceb1f491eff886f_1300305936_Screenshot_2023-09-14-10-51-22-521_com alicloud databox

Ryanlyt commented 1 year ago

spfa判断图中是否存在负环

O(nm) 应用抽屉原理

int n;      // 总点数
int h[N], w[N], e[N], ne[N], idx;       // 邻接表存储所有边
int dist[N], cnt[N];        // dist[x]存储1号点到x的最短距离,cnt[x]存储1到x的最短路中经过的点数
bool st[N];     // 存储每个点是否在队列中

// 如果存在负环,则返回true,否则返回false。
bool spfa()
{
    // 不需要初始化dist数组
    // 原理:如果某条最短路径上有n个点(除了自己),那么加上自己之后一共有n+1个点,由抽屉原理一定有两个点相同,所以存在环。

    queue<int> q;
    for (int i = 1; i <= n; i ++ )    //把所有点全部放入队列里,因为是求是否存在负环,而不是从1号点开始(从1号点出发也可能到不了负环)
    {
        q.push(i);
        st[i] = true;
    }

    while (q.size())
    {
        auto t = q.front();
        q.pop();

        st[t] = false;

        for (int i = h[t]; i != -1; i = ne[i])
        {
            int j = e[i];
            if (dist[j] > dist[t] + w[i])
            {
                dist[j] = dist[t] + w[i];
                cnt[j] = cnt[t] + 1;
                if (cnt[j] >= n) return true;       // 如果从1号点到x的最短路中包含至少n个点(不包括自己),则说明存在环
                if (!st[j])
                {
                    q.push(j);
                    st[j] = true;
                }
            }
        }
    }

    return false;
}

_020c37a9e770c292b9775844bb81589e_1025340318_Screenshot_2023-09-14-11-03-53-075_com alicloud databox _b10b84fecf35cc4f4609e9ed2ce778f6_1760144916_Screenshot_2023-09-14-11-04-25-334_com alicloud databox _f0b6f3c08c16cd311381ff842daa565e_1596218451_Screenshot_2023-09-14-11-08-09-388_com alicloud databox _12f218be42f92458bd0966f001574071_-69193670_Screenshot_2023-09-14-11-08-26-463_com alicloud databox

Ryanlyt commented 1 year ago

floyd算法

O(n^3) 用邻接矩阵存储 原理是基于动态规划

初始化:
    for (int i = 1; i <= n; i ++ )
        for (int j = 1; j <= n; j ++ )
            if (i == j) d[i][j] = 0;
            else d[i][j] = INF;

// 算法结束后,d[a][b]表示a到b的最短距离
void floyd()
{
    for (int k = 1; k <= n; k ++ )
        for (int i = 1; i <= n; i ++ )
            for (int j = 1; j <= n; j ++ )
                d[i][j] = min(d[i][j], d[i][k] + d[k][j]);
}

_78c20206422302189bf70596c0903ed1_412412695_Screenshot_2023-09-14-11-18-51-759_com alicloud databox _b03fb847dd60551f04178980e5103912_-1767792654_Screenshot_2023-09-14-11-26-32-934_com alicloud databox _9bb06676279851ff9fe9eef737909b65_-1854137415_Screenshot_2023-09-14-11-26-41-313_com alicloud databox _e62b8e46b206fe583aa21bffc32e7b4c_-1129814307_Screenshot_2023-09-14-11-33-31-480_com alicloud databox _b0f06a0e021e926f607712114240e91d_-938358061_Screenshot_2023-09-14-11-33-55-125_com alicloud databox

Ryanlyt commented 1 year ago

调试代码: 1、printf 2、删除代码

Ryanlyt commented 1 year ago

最小生成树

最小生成树对应的图都是无向图 _2da57888325f8d163b62ff6bdaf6b667_-1442206969_Screenshot_2023-09-14-11-52-04-504_com alicloud databox

朴素版prim算法

prim算法和迪杰斯特拉算法很像,迭代过程也是一样的 常用于处理稠密图,使用邻接矩阵

int n;      // n表示点数
int g[N][N];        // 邻接矩阵,存储所有边
int dist[N];        // 存储其他点到当前最小生成树的距离
bool st[N];     // 存储每个点是否已经在生成树中

// 如果图不连通,则返回INF(值是0x3f3f3f3f), 否则返回最小生成树的树边权重之和
int prim()
{
    memset(dist, 0x3f, sizeof dist);

    int res = 0;
    for (int i = 0; i < n; i ++ )
    {
        int t = -1;
        for (int j = 1; j <= n; j ++ )
            if (!st[j] && (t == -1 || dist[t] > dist[j]))
                t = j;

        if (i && dist[t] == INF) return INF;

        if (i) res += dist[t];
        st[t] = true;

        for (int j = 1; j <= n; j ++ ) dist[j] = min(dist[j], g[t][j]);
    }

    return res;
}

_a12a97f75be32f46716a31a56dbadffc_-693190190_Screenshot_2023-09-14-12-03-47-246_com alicloud databox _977b1a82955042fffc1e0107366ccf26_1620907959_Screenshot_2023-09-14-12-04-32-103_com alicloud databox _966b3ac381e336bdcaa2a9d0578940a3_1241100602_Screenshot_2023-09-14-12-04-43-188_com alicloud databox _37ca1c3b6173e1a0010e42aa238eef54_2076720845_Screenshot_2023-09-14-12-12-29-861_com alicloud databox _80e7dec89b3ec2cd58edd1fd0d3bc444_-835705542_Screenshot_2023-09-14-12-38-32-035_com alicloud databox _97495c302de6406ab15df5c467c811dd_1866441901_Screenshot_2023-09-14-12-39-02-728_com alicloud databox

克鲁斯卡尔算法

O(mlogm) 常用于处理稀疏图,不需要用邻接表邻接矩阵存图,就把边存起来就行了 并查集的应用

int n, m;       // n是点数,m是边数
int p[N];       // 并查集的父节点数组

struct Edge     // 存储边
{
    int a, b, w;

    bool operator< (const Edge &W)const
    {
        return w < W.w;
    }
}edges[M];

int find(int x)     // 并查集核心操作
{
    if (p[x] != x) p[x] = find(p[x]);
    return p[x];
}

int kruskal()
{
    sort(edges, edges + m);

    for (int i = 1; i <= n; i ++ ) p[i] = i;    // 初始化并查集

    int res = 0, cnt = 0;
    for (int i = 0; i < m; i ++ )
    {
        int a = edges[i].a, b = edges[i].b, w = edges[i].w;

        a = find(a), b = find(b);
        if (a != b)     // 如果两个连通块不连通,则将这两个连通块合并
        {
            p[a] = b;
            res += w;
            cnt ++ ;
        }
    }

    if (cnt < n - 1) return INF;
    return res;
}

_64e83d8c2ef8813bdba1240d515db25d_-495494322_Screenshot_2023-09-14-15-36-13-644_com alicloud databox _97f9a8d25b8c34c75dadda2614ee86f8_225325719_Screenshot_2023-09-14-15-39-57-044_com alicloud databox _db37e0bf6f01b3add8a1d535b28858e3_-640010668_Screenshot_2023-09-14-15-47-33-134_com alicloud databox _ed6cd2557eb0ff7f8aa84a69649fc401_-1432236139_Screenshot_2023-09-14-15-47-43-530_com alicloud databox _d4a82103b4385fbce1c5c080e1f04cba_1784810508_Screenshot_2023-09-14-15-47-55-417_com alicloud databox

Ryanlyt commented 1 year ago

染色法判别二分图

_fb95287d48b199e4e192824ac8594891_1764430382_Screenshot_2023-09-14-15-57-27-970_com alicloud databox _6563b70ea37b740177b618487d0369ba_1418820464_Screenshot_2023-09-14-15-58-44-325_com alicloud databox

O(n + m)

一个图是二分图当且仅当图中不含奇数环

int n;      // n表示点数
int h[N], e[M], ne[M], idx;     // 邻接表存储图
int color[N];       // 表示每个点的颜色,-1表示未染色,0表示白色,1表示黑色

// 参数:u表示当前节点,c表示当前点的颜色
bool dfs(int u, int c)
{
    color[u] = c;
    for (int i = h[u]; i != -1; i = ne[i])
    {
        int j = e[i];
        if (color[j] == -1)
        {
            if (!dfs(j, !c)) return false;
        }
        else if (color[j] == c) return false;
    }

    return true;
}

bool check()
{
    memset(color, -1, sizeof color);
    bool flag = true;
    for (int i = 1; i <= n; i ++ )
        if (color[i] == -1)
            if (!dfs(i, 0))
            {
                flag = false;
                break;
            }
    return flag;
}

_63dda14ea998865fb5202d048e10f931_1317920240_Screenshot_2023-09-14-16-02-24-464_com alicloud databox _9e507d1f93b2870250fa5fd891d391c7_1213005132_Screenshot_2023-09-14-16-02-44-459_com alicloud databox _b1c5b0bd71a187a13f1ac7f520b07449_1716296821_Screenshot_2023-09-14-16-39-30-358_com alicloud databox _4da33cd11f9306e5f7b2d2dd126459c7_1899284524_Screenshot_2023-09-14-16-39-57-967_com alicloud databox _0abf731eea53cd55851a6a4f34ee8578_1462079495_Screenshot_2023-09-14-16-40-02-225_com alicloud databox

Ryanlyt commented 1 year ago

匈牙利算法

O(nm) 非常常用

二分图的最大匹配
可以看成作为月老,为男生女生配对
int n1, n2;     // n1表示第一个集合中的点数,n2表示第二个集合中的点数
int h[N], e[M], ne[M], idx;     // 邻接表存储所有边,匈牙利算法中只会用到从第一个集合指向第二个集合的边,所以这里只用存一个方向的边
int match[N];       // 存储第二个集合中的每个点当前匹配的第一个集合中的点是哪个
bool st[N];     // 表示第二个集合中的每个点是否已经被遍历过

bool find(int x)
{
    for (int i = h[x]; i != -1; i = ne[i])
    {
        int j = e[i];
        if (!st[j])
        {
            st[j] = true;
            if (match[j] == 0 || find(match[j]))
            {
                match[j] = x;
                return true;
            }
        }
    }

    return false;
}

// 求最大匹配数,依次枚举第一个集合中的每个点能否匹配第二个集合中的点
int res = 0;
for (int i = 1; i <= n1; i ++ )
{
    memset(st, false, sizeof st);
    if (find(i)) res ++ ;
}

_2c257f088a9720f226006140bde33ad1_1339812324_Screenshot_2023-09-14-16-53-49-733_com alicloud databox _cb4b75740431cc8fb36d30d6fb040f03_1717758597_Screenshot_2023-09-14-16-55-09-697_com alicloud databox _76b1c793a689335b233cab1220199679_1003443755_Screenshot_2023-09-14-16-56-11-107_com alicloud databox _0a5066191c0da34318ff60bd9d8b3a71_303091427_Screenshot_2023-09-14-16-57-06-946_com alicloud databox _cb7be14f44c6707be6ee70279bf63c68_-1154658134_Screenshot_2023-09-14-17-08-09-325_com alicloud databox _88b6ec51eff68431e04af52d7ad4ed2a_-1741061083_Screenshot_2023-09-14-17-08-18-728_com alicloud databox _7d63fe2556b12f1c7b2d444f4e9ebd59_-2101770672_Screenshot_2023-09-14-17-08-35-304_com alicloud databox