The Importance of Good Starting Solutions in the Minimum Sum of Squares Clustering Problem

04/06/2020
by   Pawel Kalczynski, et al.
0

The clustering problem has many applications in Machine Learning, Operations Research, and Statistics. We propose three algorithms to create starting solutions for improvement algorithms for this problem. We test the algorithms on 72 instances that were investigated in the literature. Forty eight of them are relatively easy to solve and we found the best known solution many times for all of them. Twenty four medium and large size instances are more challenging. We found five new best known solutions and matched the best known solution for 18 of the remaining 19 instances.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/05/2019

A Heuristic Algorithm Based on Tour Rebuilding Operator for the Traveling Salesman Problem

TSP (Traveling Salesman Problem), a classic NP-complete problem in combi...
research
05/18/2014

A Multi-parent Memetic Algorithm for the Linear Ordering Problem

In this paper, we present a multi-parent memetic algorithm (denoted by M...
research
02/06/2014

A Three-Phase Search Approach for the Quadratic Minimum Spanning Tree Problem

Given an undirected graph with costs associated with each edge as well a...
research
10/28/2022

Parallel Self-Avoiding Walks for a Low-Autocorrelation Binary Sequences Problem

A low-autocorrelation binary sequences problem with a high figure of mer...
research
04/02/2012

A collaborative ant colony metaheuristic for distributed multi-level lot-sizing

The paper presents an ant colony optimization metaheuristic for collabor...
research
01/02/2020

4-uniform BCT permutations from generalized butterfly structure

As a generalization of Dillon's APN permutation, butterfly structure and...
research
08/09/2023

A Hierarchical Destroy and Repair Approach for Solving Very Large-Scale Travelling Salesman Problem

For prohibitively large-scale Travelling Salesman Problems (TSPs), exist...

Please sign up or login with your details

Forgot password? Click here to reset