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Optimaalinen pisteen sijainti kokonaisetäisyyden minimoimiseksi

Kokeile GfG Practicessa Optimaalinen pisteen sijainti kokonaisetäisyyden minimoimiseksi' title= #practiceLinkDiv { näyttö: ei mitään !tärkeää; }

Annettu joukko pisteitä ja suora kuin ax+by+c = 0. Meidän on löydettävä pisteeltä tietystä suorasta, jonka etäisyyksien summa annetusta pistejoukosta on pienin. 

Esimerkki:  



In above figure optimum location of point of x - y - 3 = 0 line is (2 -1) whose total distance with other points is 20.77 which is minimum obtainable total distance.
Recommended Practice Optimaalinen pisteen sijainti kokonaisetäisyyden minimoimiseksi Kokeile sitä!

Jos otamme yhden pisteen tietyllä suoralla äärettömällä etäisyydellä, niin etäisyyden kokonaiskustannukset ovat nyt äärettömät, kun siirrämme tätä pistettä viivalla kohti tiettyjä pisteitä, etäisyyden kokonaiskustannus alkaa pienentyä ja jonkin ajan kuluttua se alkaa taas kasvaa, mikä ylsi äärettömään viivan toisessa äärettömässä päässä, joten etäisyyskustannuskäyrä näyttää U-käyrältä ja meidän on löydettävä tämän U-käyrän alin arvo. 

Koska U-käyrä ei kasva monotonisesti tai pienene, emme voi käyttää binaarihakua alimman pisteen löytämiseen, käytämme ternaarihakua alimman pisteen löytämiseen. Kolmiosainen haku ohittaa kolmanneksen hakutilasta jokaisessa iteraatiossa voit lukea lisää kolmiosaisesta hausta tässä

Joten ratkaisu etenee seuraavasti, aloitamme alhaisella ja korkealla alustuksella pienimmillä ja suurimmilla arvoilla, sitten aloitamme iteroinnin kussakin iteraatiossa laskemme kaksi keskikohtaa mid1 ja mid2, jotka edustavat 1/3 ja 2/3 sijaintia hakuavaruudessa. Laskemme kaikkien pisteiden kokonaisetäisyyden mid1:n ja mid2:n kanssa ja päivitämme alhaista tai korkeaa vertaamalla näitä likimääräisiä etäisyyksiä, kunnes ne ovat yhtä alhaiset ja korkeat. 

C++
// C/C++ program to find optimum location and total cost #include    using namespace std; #define sq(x) ((x) * (x)) #define EPS 1e-6 #define N 5 // structure defining a point struct point {  int x y;  point() {}  point(int x int y)  : x(x)   y(y)  {  } }; // structure defining a line of ax + by + c = 0 form struct line {  int a b c;  line(int a int b int c)  : a(a)   b(b)   c(c)  {  } }; // method to get distance of point (x y) from point p double dist(double x double y point p) {  return sqrt(sq(x - p.x) + sq(y - p.y)); } /* Utility method to compute total distance all points  when choose point on given line has x-coordinate  value as X */ double compute(point p[] int n line l double X) {  double res = 0;  // calculating Y of chosen point by line equation  double Y = -1 * (l.c + l.a * X) / l.b;  for (int i = 0; i < n; i++)  res += dist(X Y p[i]);  return res; } // Utility method to find minimum total distance double findOptimumCostUtil(point p[] int n line l) {  double low = -1e6;  double high = 1e6;  // loop until difference between low and high  // become less than EPS  while ((high - low) > EPS) {  // mid1 and mid2 are representative x co-ordiantes  // of search space  double mid1 = low + (high - low) / 3;  double mid2 = high - (high - low) / 3;  //  double dist1 = compute(p n l mid1);  double dist2 = compute(p n l mid2);  // if mid2 point gives more total distance  // skip third part  if (dist1 < dist2)  high = mid2;  // if mid1 point gives more total distance  // skip first part  else  low = mid1;  }  // compute optimum distance cost by sending average  // of low and high as X  return compute(p n l (low + high) / 2); } // method to find optimum cost double findOptimumCost(int points[N][2] line l) {  point p[N];  // converting 2D array input to point array  for (int i = 0; i < N; i++)  p[i] = point(points[i][0] points[i][1]);  return findOptimumCostUtil(p N l); } // Driver code to test above method int main() {  line l(1 -1 -3);  int points[N][2] = {  { -3 -2 } { -1 0 } { -1 2 } { 1 2 } { 3 4 }  };  cout << findOptimumCost(points l) << endl;  return 0; } 
Java
// A Java program to find optimum location // and total cost class GFG {  static double sq(double x) { return ((x) * (x)); }  static int EPS = (int)(1e-6) + 1;  static int N = 5;  // structure defining a point  static class point {  int x y;  point() {}  public point(int x int y)  {  this.x = x;  this.y = y;  }  };  // structure defining a line of ax + by + c = 0 form  static class line {  int a b c;  public line(int a int b int c)  {  this.a = a;  this.b = b;  this.c = c;  }  };  // method to get distance of point (x y) from point p  static double dist(double x double y point p)  {  return Math.sqrt(sq(x - p.x) + sq(y - p.y));  }  /* Utility method to compute total distance all points  when choose point on given line has x-coordinate  value as X */  static double compute(point p[] int n line l  double X)  {  double res = 0;  // calculating Y of chosen point by line equation  double Y = -1 * (l.c + l.a * X) / l.b;  for (int i = 0; i < n; i++)  res += dist(X Y p[i]);  return res;  }  // Utility method to find minimum total distance  static double findOptimumCostUtil(point p[] int n  line l)  {  double low = -1e6;  double high = 1e6;  // loop until difference between low and high  // become less than EPS  while ((high - low) > EPS) {  // mid1 and mid2 are representative x  // co-ordiantes of search space  double mid1 = low + (high - low) / 3;  double mid2 = high - (high - low) / 3;  double dist1 = compute(p n l mid1);  double dist2 = compute(p n l mid2);  // if mid2 point gives more total distance  // skip third part  if (dist1 < dist2)  high = mid2;  // if mid1 point gives more total distance  // skip first part  else  low = mid1;  }  // compute optimum distance cost by sending average  // of low and high as X  return compute(p n l (low + high) / 2);  }  // method to find optimum cost  static double findOptimumCost(int points[][] line l)  {  point[] p = new point[N];  // converting 2D array input to point array  for (int i = 0; i < N; i++)  p[i] = new point(points[i][0] points[i][1]);  return findOptimumCostUtil(p N l);  }  // Driver Code  public static void main(String[] args)  {  line l = new line(1 -1 -3);  int points[][] = { { -3 -2 }  { -1 0 }  { -1 2 }  { 1 2 }  { 3 4 } };  System.out.println(findOptimumCost(points l));  } } // This code is contributed by Rajput-Ji 
Python3
# A Python3 program to find optimum location # and total cost import math class Optimum_distance: # Class defining a point class Point: def __init__(self x y): self.x = x self.y = y # Class defining a line of ax + by + c = 0 form class Line: def __init__(self a b c): self.a = a self.b = b self.c = c # Method to get distance of point  # (x y) from point p def dist(self x y p): return math.sqrt((x - p.x) ** 2 + (y - p.y) ** 2) # Utility method to compute total distance # all points when choose point on given # line has x-coordinate value as X def compute(self p n l x): res = 0 y = -1 * (l.a*x + l.c) / l.b # Calculating Y of chosen point # by line equation for i in range(n): res += self.dist(x y p[i]) return res # Utility method to find minimum total distance def find_Optimum_cost_untill(self p n l): low = -1e6 high = 1e6 eps = 1e-6 + 1 # Loop until difference between low # and high become less than EPS while((high - low) > eps): # mid1 and mid2 are representative x # co-ordiantes of search space mid1 = low + (high - low) / 3 mid2 = high - (high - low) / 3 dist1 = self.compute(p n l mid1) dist2 = self.compute(p n l mid2) # If mid2 point gives more total  # distance skip third part if (dist1 < dist2): high = mid2 # If mid1 point gives more total # distance skip first part else: low = mid1 # Compute optimum distance cost by  # sending average of low and high as X return self.compute(p n l (low + high) / 2) # Method to find optimum cost def find_Optimum_cost(self p l): n = len(p) p_arr = [None] * n # Converting 2D array input to point array for i in range(n): p_obj = self.Point(p[i][0] p[i][1]) p_arr[i] = p_obj return self.find_Optimum_cost_untill(p_arr n l) # Driver Code if __name__ == '__main__': obj = Optimum_distance() l = obj.Line(1 -1 -3) p = [ [ -3 -2 ] [ -1 0 ] [ -1 2 ] [ 1 2 ] [ 3 4 ] ] print(obj.find_Optimum_cost(p l)) # This code is contributed by Sulu_mufi 
C#
// C# program to find optimum location // and total cost using System; class GFG {  static double sq(double x) { return ((x) * (x)); }  static int EPS = (int)(1e-6) + 1;  static int N = 5;  // structure defining a point  public class point {  public int x y;  public point() {}  public point(int x int y)  {  this.x = x;  this.y = y;  }  };  // structure defining a line  // of ax + by + c = 0 form  public class line {  public int a b c;  public line(int a int b int c)  {  this.a = a;  this.b = b;  this.c = c;  }  };  // method to get distance of  // point (x y) from point p  static double dist(double x double y point p)  {  return Math.Sqrt(sq(x - p.x) + sq(y - p.y));  }  /* Utility method to compute total distance  of all points when choose point on  given line has x-coordinate value as X */  static double compute(point[] p int n line l  double X)  {  double res = 0;  // calculating Y of chosen point  // by line equation  double Y = -1 * (l.c + l.a * X) / l.b;  for (int i = 0; i < n; i++)  res += dist(X Y p[i]);  return res;  }  // Utility method to find minimum total distance  static double findOptimumCostUtil(point[] p int n  line l)  {  double low = -1e6;  double high = 1e6;  // loop until difference between  // low and high become less than EPS  while ((high - low) > EPS) {  // mid1 and mid2 are representative  // x co-ordiantes of search space  double mid1 = low + (high - low) / 3;  double mid2 = high - (high - low) / 3;  double dist1 = compute(p n l mid1);  double dist2 = compute(p n l mid2);  // if mid2 point gives more total distance  // skip third part  if (dist1 < dist2)  high = mid2;  // if mid1 point gives more total distance  // skip first part  else  low = mid1;  }  // compute optimum distance cost by  // sending average of low and high as X  return compute(p n l (low + high) / 2);  }  // method to find optimum cost  static double findOptimumCost(int[ ] points line l)  {  point[] p = new point[N];  // converting 2D array input to point array  for (int i = 0; i < N; i++)  p[i] = new point(points[i 0] points[i 1]);  return findOptimumCostUtil(p N l);  }  // Driver Code  public static void Main(String[] args)  {  line l = new line(1 -1 -3);  int[ ] points = { { -3 -2 }  { -1 0 }  { -1 2 }  { 1 2 }  { 3 4 } };  Console.WriteLine(findOptimumCost(points l));  } } // This code is contributed by 29AjayKumar 
JavaScript
<script> // A JavaScript program to find optimum location // and total cost function sq(x) {  return x*x; } let EPS = (1e-6) + 1; let N = 5; // structure defining a point class point {  constructor(xy)  {  this.x=x;  this.y=y;  } } // structure defining a line of ax + by + c = 0 form class line {  constructor(abc)  {  this.a = a;  this.b = b;  this.c = c;  }   } // method to get distance of point (x y) from point p function dist(xyp) {  return Math.sqrt(sq(x - p.x) + sq(y - p.y)); } /* Utility method to compute total distance all points  when choose point on given line has x-coordinate  value as X */ function compute(pnlX) {  let res = 0;    // calculating Y of chosen point by line equation  let Y = -1 * (l.c + l.a * X) / l.b;  for (let i = 0; i < n; i++)  res += dist(X Y p[i]);    return res; } // Utility method to find minimum total distance function findOptimumCostUtil(pnl) {  let low = -1e6;  let high = 1e6;    // loop until difference between low and high  // become less than EPS  while ((high - low) > EPS) {  // mid1 and mid2 are representative x  // co-ordiantes of search space  let mid1 = low + (high - low) / 3;  let mid2 = high - (high - low) / 3;    let dist1 = compute(p n l mid1);  let dist2 = compute(p n l mid2);    // if mid2 point gives more total distance  // skip third part  if (dist1 < dist2)  high = mid2;    // if mid1 point gives more total distance  // skip first part  else  low = mid1;  }    // compute optimum distance cost by sending average  // of low and high as X  return compute(p n l (low + high) / 2); } // method to find optimum cost function findOptimumCost(pointsl) {  let p = new Array(N);    // converting 2D array input to point array  for (let i = 0; i < N; i++)  p[i] = new point(points[i][0] points[i][1]);    return findOptimumCostUtil(p N l); } // Driver Code let l = new line(1 -1 -3); let points= [[ -3 -2 ]  [ -1 0 ]  [ -1 2 ]  [ 1 2 ]  [ 3 4 ]]; document.write(findOptimumCost(points l)); // This code is contributed by rag2127 </script> 

Lähtö
20.7652

Aika monimutkaisuus: O(n2
Aputila: O(n)