Mining Associations on the Warsaw Stock Exchange

@article{Karpio2013MiningAO,
  title={Mining Associations on the Warsaw Stock Exchange},
  author={Krzysztof Karpio and Piotr Łukasiewicz and Arkadiusz Orłowski and Tomasz S. Zabkowski},
  journal={Acta Physica Polonica A},
  year={2013},
  volume={123},
  pages={553-559}
}
Identi cation of patterns in stock markets has been an important subject for many years. In the past, numerous techniques, both technical and econometric, were used to predict changes in stock markets, but dependences among all the companies listed on a stock market were considered in a limited extent. Numerous studies con rm that larger stocks items appear to in uence smaller ones and that, on a global level, most of the world's stock markets are integrated. Therefore, this study implements… 

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