Unsupervised Ensemble Learning Using High-dimensional Spectroscopy Data of Organic Compounds

Author:

He Kedan1,Massena Djenerly G.1

Affiliation:

1. Eastern Connecticut State University

Abstract

Abstract Cluster ensemble (CE) is an ensemble learning strategy for unsupervised learning (clustering) that uses a set of clustering solutions to achieve more comprehensive clustering results than traditional single clustering approaches. This meta-learning formalism helps users overcome the dilemma of choosing the appropriate clustering algorithm and parameters for a given data set. Unfortunately, not all clustering solutions in the ensemble contribute to the final data partition. Cluster ensemble selection (CES) aims at selecting a subset from a large library of clustering solutions to form a smaller cluster ensemble that performs as well as or better than the set of all available clustering solutions. In this paper, we investigate four CES methods for the categorization of structurally distinct organic compounds using high-dimensional IR and Raman spectroscopy data. Single quality selection (SQI) forms a subset of the ensemble by selecting the highest quality ensemble members. The Single Quality Selection (SQI) method is used with various quality indices to select subsets by including the highest quality ensemble members. The Bagging method, usually applied in supervised learning, ranks ensemble members by calculating the normalized mutual information (NMI) between ensemble members and consensus solutions generated from a randomly sampled subset of the full ensemble. The hierarchical cluster and select method (HCAS-SQI) uses the diversity matrix of ensemble members to select a diverse set of ensemble members with the highest quality. Furthermore, a combining strategy can be used to combine subsets selected using multiple quality indices (HCAS-MQI) for the refinement of clustering solutions in the ensemble. The IR + Raman hybrid ensemble library is created by merging two complementary “views” of the organic compounds. This inherently more diverse library gives the best full ensemble consensus results. Overall, the Bagging method is recommended because it provides the most robust results that are better than or comparable to the full ensemble consensus solutions.

Publisher

Research Square Platform LLC

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