Understanding non-linear relationships among financial instruments has various applications in investment processes ranging from risk management, portfolio construction and trading strategies. Here, we focus on interconnectedness among stocks based on their correlation matrix which we represent as a network with the nodes representing individual stocks and the weighted links between pairs of nodes representing the corresponding pair-wise correlation coefficients. The traditional network science techniques, which are extensively utilized in financial literature, require handcrafted features such as centrality measures to understand such correlation networks. However, manually enlisting all such handcrafted features may quickly turn out to be...
There is a history of hybrid machine learning approaches where the result of an unsupervised learnin...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
We review the recent approach of correlation based networks of financial equities. We investigate po...
Networks of companies can be constructed by using return correlations. A crucial issue in this appro...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
To understand risk in a financial market we must understand how asset prices are related. By using c...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
The core of stock portfolio diversification is to pick stocks from different correlation clusters wh...
Stock correlation networks use stock price data to explore the relationship between different stocks...
Abstract. Networks of companies can be constructed by using return correlations. A crucial issue in ...
Network momentum provides a novel type of risk premium, which exploits the interconnections among as...
In recent years, association networks and their applications have received increasing interest. The ...
What are the dominant stocks which drive the correlations present among stocks traded in a stock mar...
Traditional stock movement prediction tasks are formulated as either classification or regression ta...
To maximize returns and diversify a financial portfolio, the stock price market participants have al...
There is a history of hybrid machine learning approaches where the result of an unsupervised learnin...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
We review the recent approach of correlation based networks of financial equities. We investigate po...
Networks of companies can be constructed by using return correlations. A crucial issue in this appro...
115 pagesQuantitative models are changing virtually every aspect of investment. In this thesis, we f...
To understand risk in a financial market we must understand how asset prices are related. By using c...
In this paper, networks of S&P 500 stocks are constructed based on the correlation matrices of daily...
The core of stock portfolio diversification is to pick stocks from different correlation clusters wh...
Stock correlation networks use stock price data to explore the relationship between different stocks...
Abstract. Networks of companies can be constructed by using return correlations. A crucial issue in ...
Network momentum provides a novel type of risk premium, which exploits the interconnections among as...
In recent years, association networks and their applications have received increasing interest. The ...
What are the dominant stocks which drive the correlations present among stocks traded in a stock mar...
Traditional stock movement prediction tasks are formulated as either classification or regression ta...
To maximize returns and diversify a financial portfolio, the stock price market participants have al...
There is a history of hybrid machine learning approaches where the result of an unsupervised learnin...
We apply a method to filter relevant information from the correlation coefficient matrix by extracti...
We review the recent approach of correlation based networks of financial equities. We investigate po...