Classifying stocks by measuring the similarity between them can provide investors with a reliable reference and help them earn more profits than before. This paper attempts to explore a convincing method to measure the similarity of international stocks. We selected the daily closing prices of 18 stocks from the Americas, Asia, Europe, and Australia, and mapped them as points into a three-dimensional space. In order to measure the similarity of stocks, we recommend calculating the Hurst surface distance as a distance matrix to classify stocks through the multidimensional scaling (MDS) method. We compare the classification results with classical MDS using Euclidean distance as similarity measure and MDS based on the $\rho_{D P X A}$ (the de...
We compare some methods recently used in the literature to detect the existence of a certain degree ...
Long before we started with the 21st millennium, Stephen Hawking saw the current millennium as the m...
This article introduces a new procedure for clustering a large number of financial time series based...
We propose a graphical method to visualize possible time-varying correlations between fifteen stock...
We propose a graphical method to visualize possible time-varying correlations be- tween fifteen sto...
This paper applies Multidimensional scaling techniques for visualizing possible time-varying correla...
Finding the correlation between stocks is an effective method for screening and adjusting investment...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
A lot of studies dealing with stock network analysis, where each individual stock is represented by ...
We quantify time-varying, bivariate and multivariate comovement between international stock market r...
Correlation-based network as a model for financial markets, especially stock market, is a complex sy...
PURPOSE: The purpose of this paper is to use Dynamic Time Warping algorithm along with two statisti...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
Trend forecasting could be one of the most challenging things in stock market analysis, as the data ...
A clustering procedure is introduced based on the Hausdorff distance as a similarity measure between...
We compare some methods recently used in the literature to detect the existence of a certain degree ...
Long before we started with the 21st millennium, Stephen Hawking saw the current millennium as the m...
This article introduces a new procedure for clustering a large number of financial time series based...
We propose a graphical method to visualize possible time-varying correlations between fifteen stock...
We propose a graphical method to visualize possible time-varying correlations be- tween fifteen sto...
This paper applies Multidimensional scaling techniques for visualizing possible time-varying correla...
Finding the correlation between stocks is an effective method for screening and adjusting investment...
This paper contributes multivariate versions of seven commonly used elastic similarity and distance ...
A lot of studies dealing with stock network analysis, where each individual stock is represented by ...
We quantify time-varying, bivariate and multivariate comovement between international stock market r...
Correlation-based network as a model for financial markets, especially stock market, is a complex sy...
PURPOSE: The purpose of this paper is to use Dynamic Time Warping algorithm along with two statisti...
Similarity-based retrieval has attracted an increasing amount of attention in recent years. Although...
Trend forecasting could be one of the most challenging things in stock market analysis, as the data ...
A clustering procedure is introduced based on the Hausdorff distance as a similarity measure between...
We compare some methods recently used in the literature to detect the existence of a certain degree ...
Long before we started with the 21st millennium, Stephen Hawking saw the current millennium as the m...
This article introduces a new procedure for clustering a large number of financial time series based...