import math from typing import dict, list, optional import matplotlib.pyplot as plt import pandas as pd class DbScan: """ DBSCAN Algorithm : Density-Based Spatial Clustering Of Applications With Noise Refer this website for more details : https://en.wikipedia.org/wiki/DBSCAN Functions: ---------- __init__() : Constructor that sets minPts, radius and file perform_dbscan() : Invoked by constructor and calculates the core and noise points and returns a dictionary. print_dbscan() : Prints the core and noise points along with stating if the noise are border points or not. plot_dbscan() : Plots the points to show the core and noise point. To create a object ------------------ import dbscan obj = dbscan.DbScan(minpts, radius, file) obj.print_dbscan() obj.plot_dbscan() """ def __init__( self, minpts: int, radius: int, file: optional[str] = ( {"x": 3, "y": 7}, {"x": 4, "y": 6}, {"x": 5, "y": 5}, {"x": 6, "y": 4}, {"x": 7, "y": 3}, {"x": 6, "y": 2}, {"x": 7, "y": 2}, {"x": 8, "y": 4}, {"x": 3, "y": 3}, {"x": 2, "y": 6}, {"x": 3, "y": 5}, {"x": 2, "y": 4}, ), ) -> None: """ Constructor Args: ----------- minpts (int) : Minimum number of points needed to be within the radius to considered as core radius (int) : The radius from a given core point where other core points can be considered as core file (csv) : CSV file location. Should contain x and y coordinate value for each point. Example : minPts = 4 radius = 1.9 file = 'data_dbscan.csv' File Structure of CSV Data: --------------------------- _____ x | y ----- 3 | 7 4 | 6 5 | 5 6 | 4 7 | 3 ----- """ self.minpts = minpts self.radius = radius self.file = file self.dict1 = self.perform_dbscan() def perform_dbscan(self) -> dict[int, list[int]]: """ Args: ----------- None Return: -------- Dictionary with points and the list of points that lie in its radius >>> result = DbScan(4, 1.9).perform_dbscan() >>> for key in sorted(result): ... print(key, sorted(result[key])) 1 [1, 2, 10] 2 [1, 2, 3, 11] 3 [2, 3, 4] 4 [3, 4, 5] 5 [4, 5, 6, 7, 8] 6 [5, 6, 7] 7 [5, 6, 7] 8 [5, 8] 9 [9, 12] 10 [1, 10, 11] 11 [2, 10, 11, 12] 12 [9, 11, 12] """ if type(self.file) is str: data = pd.read_csv(self.file) else: data = pd.DataFrame(list(self.file)) e = self.radius dict1 = {} for i in range(len(data)): for j in range(len(data)): dist = math.sqrt( pow(data["x"][j] - data["x"][i], 2) + pow(data["y"][j] - data["y"][i], 2) ) if dist < e: if i + 1 in dict1: dict1[i + 1].append(j + 1) else: dict1[i + 1] = [ j + 1, ] return dict1 def print_dbscan(self) -> None: """ Outputs: -------- Prints each point and if it is a core or a noise (w/ border) >>> DbScan(4,1.9).print_dbscan() 1 [1, 2, 10] ---> Noise ---> Border 2 [1, 2, 3, 11] ---> Core 3 [2, 3, 4] ---> Noise ---> Border 4 [3, 4, 5] ---> Noise ---> Border 5 [4, 5, 6, 7, 8] ---> Core 6 [5, 6, 7] ---> Noise ---> Border 7 [5, 6, 7] ---> Noise ---> Border 8 [5, 8] ---> Noise ---> Border 9 [9, 12] ---> Noise 10 [1, 10, 11] ---> Noise ---> Border 11 [2, 10, 11, 12] ---> Core 12 [9, 11, 12] ---> Noise ---> Border """ for i in self.dict1: print(i, " ", self.dict1[i], end=" ---> ") if len(self.dict1[i]) >= self.minpts: print("Core") else: for j in self.dict1: if ( i != j and len(self.dict1[j]) >= self.minpts and i in self.dict1[j] ): print("Noise ---> Border") break else: print("Noise") def plot_dbscan(self) -> None: """ Output: ------- A matplotlib plot that show points as core and noise along with the circle that lie within it. >>> DbScan(4,1.9).plot_dbscan() Plotted Successfully """ if type(self.file) is str: data = pd.read_csv(self.file) else: data = pd.DataFrame(list(self.file)) e = self.radius for i in self.dict1: if len(self.dict1[i]) >= self.minpts: plt.scatter(data["x"][i - 1], data["y"][i - 1], color="red") circle = plt.Circle( (data["x"][i - 1], data["y"][i - 1]), e, color="blue", fill=False ) plt.gca().add_artist(circle) plt.text( data["x"][i - 1], data["y"][i - 1], "P" + str(i), ha="center", va="bottom", ) else: plt.scatter(data["x"][i - 1], data["y"][i - 1], color="green") plt.text( data["x"][i - 1], data["y"][i - 1], "P" + str(i), ha="center", va="bottom", ) plt.xlabel("X") plt.ylabel("Y") plt.title("DBSCAN Clustering") plt.legend(["Core", "Noise"]) plt.show() print("Plotted Successfully")