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Stock correlation network

A stock correlation network is a type of financial network based on stock price correlation used for observing, analyzing and predicting the stock market dynamics.

Background edit

In the last decade, financial networks have attracted more attention from the research community. A study on company ownership based network showed a power law distribution with majority of companies controlled by small number of people. Another study focused on board of directors where the network was created between companies if represented by the same member on board. The board membership network thus created resulted in a power law with small number of board members representing large number of companies. Several studies have proposed network based models for studying the stock correlation network.[1][2][3][4] Stock correlation network has proven its efficacy in predicting market movements. Chakrabortia and Onella showed that the average distance between the stocks can be a significant indicator of market dynamics.[5] Their work focused on stock market (1985–1990) that included the stock market crash of 1987 (Black Monday). Andrew Lo and Khandaniy worked on the network of different hedge funds and observed the patterns before the August 2007 stock market turbulence.[6]

Methods edit

The basic approach for building the stock correlation network involves two steps. The first step aims at finding the correlation between each pair of stock considering their corresponding time series. The second step applies a criterion to connect the stocks based on their correlation. The popular method for connecting two correlated stocks is the minimum spanning tree method. The other methods are, planar maximally filtered graph, and winner take all method. In all three methods, the procedure for finding correlation between stocks remains the same.

Step 1: Select the desired time series data. The time series data can be daily closing prices, daily trading volumes, daily opening prices, and daily price returns.

Step 2: For a particular time series selected from step 1, find the cross correlation for each pair of stocks using the cross correlation formula.

Step 3: Compute the cross correlation for all the stocks and create a cross correlation matrix  . The cross correlation is between stock   and stock   and their time series data is free of time delays.

Step 4: In case of the minimum spanning tree method a metric distance   is calculated using the cross correlation matrix.

 =  

Where   is the edge distance between stock   and stock  . The minimum spanning tree and planar maximally filtered graph may cause loss of information, i.e., some high correlation edges are discarded and low correlation edges are retained because of the topological reduction criteria.[7] Tse, et al. introduced the winner take all connection criterion where in the drawback of minimum spanning tree and planar maximally filtered graph are eliminated.[7] In winner take all method, step 1-3 are retained. However, in step 4 the nodes are linked based on a threshold.

  λ

The threshold values (λ) can be set between 0 and 1. Tse, et al. showed that for large values of threshold (0.7, 0.8, and 0.9) the stock correlation networks are scale free where the nodes linked in a manner that their degree distribution follows a power law.[7] For small values of threshold, the network tends to be fully connected and does not exhibit scale free distribution.

References edit

  1. ^ Mantegna, R.N. (1999). "Hierarchical structure in financial markets". The European Physical Journal B. Springer Science and Business Media LLC. 11 (1): 193–197. arXiv:cond-mat/9802256. Bibcode:1999EPJB...11..193M. doi:10.1007/s100510050929. ISSN 1434-6028. S2CID 16976422.
  2. ^ Vandewalle, N. Brisbois, F. and Tordoir, X. (2001). Self-organized critical topology of stock markets. Quantit. Finan(1): 372–375
  3. ^ Bonanno, Giovanni; Caldarelli, Guido; Lillo, Fabrizio; Mantegna, Rosario N. (2003-10-28). "Topology of correlation-based minimal spanning trees in real and model markets". Physical Review E. American Physical Society (APS). 68 (4): 046130. arXiv:cond-mat/0211546. Bibcode:2003PhRvE..68d6130B. doi:10.1103/physreve.68.046130. ISSN 1063-651X. PMID 14683025. S2CID 16150661.
  4. ^ Onnela, J.-P.; Chakraborti, A.; Kaski, K.; Kertész, J.; Kanto, A. (2003-11-13). "Dynamics of market correlations: Taxonomy and portfolio analysis". Physical Review E. 68 (5): 056110. arXiv:cond-mat/0302546. Bibcode:2003PhRvE..68e6110O. doi:10.1103/physreve.68.056110. ISSN 1063-651X. PMID 14682849. S2CID 9619753.
  5. ^ Onnela, J.-P.; Chakraborti, A.; Kaski, K.; Kertész, J. (2003). "Dynamic asset trees and Black Monday". Physica A: Statistical Mechanics and Its Applications. 324 (1–2): 247–252. arXiv:cond-mat/0212037. Bibcode:2003PhyA..324..247O. doi:10.1016/s0378-4371(02)01882-4. ISSN 0378-4371. S2CID 11555914.
  6. ^ Andrew W. Lo Amir E. Khandaniy. (2007). What happened to the quants in August 2007? Preprint.
  7. ^ a b c Tse, Chi K.; Liu, Jing; Lau, Francis C.M. (2010). "A network perspective of the stock market". Journal of Empirical Finance. Elsevier BV. 17 (4): 659–667. doi:10.1016/j.jempfin.2010.04.008. ISSN 0927-5398.

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A stock correlation network is a type of financial network based on stock price correlation used for observing analyzing and predicting the stock market dynamics Background editIn the last decade financial networks have attracted more attention from the research community A study on company ownership based network showed a power law distribution with majority of companies controlled by small number of people Another study focused on board of directors where the network was created between companies if represented by the same member on board The board membership network thus created resulted in a power law with small number of board members representing large number of companies Several studies have proposed network based models for studying the stock correlation network 1 2 3 4 Stock correlation network has proven its efficacy in predicting market movements Chakrabortia and Onella showed that the average distance between the stocks can be a significant indicator of market dynamics 5 Their work focused on stock market 1985 1990 that included the stock market crash of 1987 Black Monday Andrew Lo and Khandaniy worked on the network of different hedge funds and observed the patterns before the August 2007 stock market turbulence 6 Methods editThe basic approach for building the stock correlation network involves two steps The first step aims at finding the correlation between each pair of stock considering their corresponding time series The second step applies a criterion to connect the stocks based on their correlation The popular method for connecting two correlated stocks is the minimum spanning tree method The other methods are planar maximally filtered graph and winner take all method In all three methods the procedure for finding correlation between stocks remains the same Step 1 Select the desired time series data The time series data can be daily closing prices daily trading volumes daily opening prices and daily price returns Step 2 For a particular time series selected from step 1 find the cross correlation for each pair of stocks using the cross correlation formula Step 3 Compute the cross correlation for all the stocks and create a cross correlation matrix C i j displaystyle Cij nbsp The cross correlation is between stock i displaystyle i nbsp and stock j displaystyle j nbsp and their time series data is free of time delays Step 4 In case of the minimum spanning tree method a metric distance d i j displaystyle dij nbsp is calculated using the cross correlation matrix d i j displaystyle dij nbsp 2 1 C i j 0 5 displaystyle 2 1 Cij 0 5 nbsp Where d i j displaystyle dij nbsp is the edge distance between stock i displaystyle i nbsp and stock j displaystyle j nbsp The minimum spanning tree and planar maximally filtered graph may cause loss of information i e some high correlation edges are discarded and low correlation edges are retained because of the topological reduction criteria 7 Tse et al introduced the winner take all connection criterion where in the drawback of minimum spanning tree and planar maximally filtered graph are eliminated 7 In winner take all method step 1 3 are retained However in step 4 the nodes are linked based on a threshold C i j displaystyle Cij nbsp lThe threshold values l can be set between 0 and 1 Tse et al showed that for large values of threshold 0 7 0 8 and 0 9 the stock correlation networks are scale free where the nodes linked in a manner that their degree distribution follows a power law 7 For small values of threshold the network tends to be fully connected and does not exhibit scale free distribution References edit Mantegna R N 1999 Hierarchical structure in financial markets The European Physical Journal B Springer Science and Business Media LLC 11 1 193 197 arXiv cond mat 9802256 Bibcode 1999EPJB 11 193M doi 10 1007 s100510050929 ISSN 1434 6028 S2CID 16976422 Vandewalle N Brisbois F and Tordoir X 2001 Self organized critical topology of stock markets Quantit Finan 1 372 375 Bonanno Giovanni Caldarelli Guido Lillo Fabrizio Mantegna Rosario N 2003 10 28 Topology of correlation based minimal spanning trees in real and model markets Physical Review E American Physical Society APS 68 4 046130 arXiv cond mat 0211546 Bibcode 2003PhRvE 68d6130B doi 10 1103 physreve 68 046130 ISSN 1063 651X PMID 14683025 S2CID 16150661 Onnela J P Chakraborti A Kaski K Kertesz J Kanto A 2003 11 13 Dynamics of market correlations Taxonomy and portfolio analysis Physical Review E 68 5 056110 arXiv cond mat 0302546 Bibcode 2003PhRvE 68e6110O doi 10 1103 physreve 68 056110 ISSN 1063 651X PMID 14682849 S2CID 9619753 Onnela J P Chakraborti A Kaski K Kertesz J 2003 Dynamic asset trees and Black Monday Physica A Statistical Mechanics and Its Applications 324 1 2 247 252 arXiv cond mat 0212037 Bibcode 2003PhyA 324 247O doi 10 1016 s0378 4371 02 01882 4 ISSN 0378 4371 S2CID 11555914 Andrew W Lo Amir E Khandaniy 2007 What happened to the quants in August 2007 Preprint a b c Tse Chi K Liu Jing Lau Francis C M 2010 A network perspective of the stock market Journal of Empirical Finance Elsevier BV 17 4 659 667 doi 10 1016 j jempfin 2010 04 008 ISSN 0927 5398 Retrieved from https en wikipedia org w index php title Stock correlation network amp oldid 1118951319, wikipedia, wiki, book, books, library,

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