Creating and managing a successful stock portfolio are a difficult and challenging practice caused by the uncertainty created by the fluctuation of the stocks and the randomness in the market itself. Portfolio diversification, as stated in modern portfolio theory, is a go-to solution to manage risks. The purpose of portfolio diversification is to reduce the return’s variance compared with a single stock investment or undiversified portfolio. The primary motivation of this research is to investigate the portfolio selection strategies through clustering and application of genetic algorithm. Cluster analysis serves as a method to cluster assets with similar financial ratio scores which is the scores of Earnings/Share (EPS), Price/Earnings Ratio (PER), Price/Earnings to Growth (PEG), Return on Asset (ROA), Return on Equity (ROE), and Debt to Equity Ratio (DER). By clustering method, homogeneous clusters are produced and can be used in diversifying portfolio. In this paper, Agglomerative Clustering (AC) is used as the clustering method. Then Genetic Algorithm (GA) will be applied to each resulting cluster to obtain the optimal proportion of each stock in the portfolio. Genetic algorithm is a searching algorithm based on genetic principles and natural selection. The performance of Genetic Algorithm combined with Agglomerative Clustering (ACGA) in portfolio optimization, evaluated based on some actual datasets, gives a portfolio with bigger expected return than a portfolio constructed with only Genetic Algorithm or a portfolio constructed by uniformly weighted stock.
Skip Nav Destination
,
,
Article navigation
22 October 2018
PROCEEDINGS OF THE 3RD INTERNATIONAL SYMPOSIUM ON CURRENT PROGRESS IN MATHEMATICS AND SCIENCES 2017 (ISCPMS2017)
26–27 July 2017
Bali, Indonesia
Research Article|
October 22 2018
Agglomerative clustering and genetic algorithm in portfolio optimization Free
E. Erica;
E. Erica
Department of Mathematics, Faculty of Mathematics and Natural Sciences (FMIPA), Universitas Indonesia
, Depok 16424, Indonesia
Search for other works by this author on:
B. D. Handari;
B. D. Handari
a)
Department of Mathematics, Faculty of Mathematics and Natural Sciences (FMIPA), Universitas Indonesia
, Depok 16424, Indonesia
a)Corresponding author: [email protected]
Search for other works by this author on:
G. F. Hertono
G. F. Hertono
Department of Mathematics, Faculty of Mathematics and Natural Sciences (FMIPA), Universitas Indonesia
, Depok 16424, Indonesia
Search for other works by this author on:
E. Erica
B. D. Handari
a)
G. F. Hertono
Department of Mathematics, Faculty of Mathematics and Natural Sciences (FMIPA), Universitas Indonesia
, Depok 16424, Indonesia
a)Corresponding author: [email protected]
AIP Conf. Proc. 2023, 020217 (2018)
Citation
E. Erica, B. D. Handari, G. F. Hertono; Agglomerative clustering and genetic algorithm in portfolio optimization. AIP Conf. Proc. 22 October 2018; 2023 (1): 020217. https://doi.org/10.1063/1.5064214
Download citation file:
Citing articles via
The implementation of reflective assessment using Gibbs’ reflective cycle in assessing students’ writing skill
Lala Nurlatifah, Pupung Purnawarman, et al.
Effect of coupling agent type on the self-cleaning and anti-reflective behaviour of advance nanocoating for PV panels application
Taha Tareq Mohammed, Hadia Kadhim Judran, et al.
Classification data mining with Laplacian Smoothing on Naïve Bayes method
Ananda P. Noto, Dewi R. S. Saputro
Related Content
Implementation of agglomerative clustering and genetic algorithm on stock portfolio optimization with possibilistic constraints
AIP Conf. Proc. (November 2019)
Implementation of agglomerative clustering and modified artificial bee colony algorithm on stock portfolio optimization with possibilistic constraints
AIP Conf. Proc. (November 2019)
Classical portfolio selection with cluster analysis: Comparison between hierarchical complete linkage and Ward algorithm
AIP Conf. Proc. (December 2019)
Implementation of density-based spatial clustering of application with noise and genetic algorithm in portfolio optimization with constraint
AIP Conf. Proc. (November 2019)
Application of agglomerative clustering for analyzing phylogenetically on bacterium of saliva
AIP Conf. Proc. (July 2017)