This proposed thesis uses the Haar wavelets to create new technical indicators, to evaluate their performance in order to test the validity of the weak form of efficient market hypothesis. The chosen approach aims to implement the capabilities of technical indicators to capture the long memory present in the US and European stock indices through the estimation of the trend by the smoothing process. Moreover, the trend is an important component in the economic and financial series. Indeed, it has been the subject of innumerable investigations in technical analysis, in signal processing and in the theory business cycle theory. However, its presence is not taken into account in the classic theory of finance because the main models used focus o...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/CESFramDP2009.htmClassification JEL :...
Investors are constantly asking whether beating the market on a consistent basis is possible. There ...
Similarity measures play an important role in many data mining algorithms. To allow the use of such ...
This proposed thesis uses the Haar wavelets to create new technical indicators, to evaluate their pe...
Cette thèse proposée utilise les ondelettes de Haar à créer de nouveaux indicateurs techniques, d’en...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
International audienceThis article aims at investigating econometrically the market efficiency conce...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
The paper treats of an issue that is interrelated to the prediction inseparably. Namely if one model...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
Methods for Estimating the Hurst Exponent: Application to Stock Market Returns by Valérie Mignon T...
In this paper we show the degrees of persistence of the time series if eight European stock market i...
Statistical analysis of financial time series is studied. We use wavelet analysis to study signal to...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/CESFramDP2009.htmClassification JEL :...
Investors are constantly asking whether beating the market on a consistent basis is possible. There ...
Similarity measures play an important role in many data mining algorithms. To allow the use of such ...
This proposed thesis uses the Haar wavelets to create new technical indicators, to evaluate their pe...
Cette thèse proposée utilise les ondelettes de Haar à créer de nouveaux indicateurs techniques, d’en...
Purpose - This paper, using Turkish stock index data, set outs to present long-term memory effect us...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
International audienceThis article aims at investigating econometrically the market efficiency conce...
Long-term memory effect in stock prices might be captured, if any, with alternative models. Though G...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
The paper treats of an issue that is interrelated to the prediction inseparably. Namely if one model...
Memory in finance is the foundation of a well-established forecasting model, and new financial theor...
Methods for Estimating the Hurst Exponent: Application to Stock Market Returns by Valérie Mignon T...
In this paper we show the degrees of persistence of the time series if eight European stock market i...
Statistical analysis of financial time series is studied. We use wavelet analysis to study signal to...
URL des Documents de travail : http://ces.univ-paris1.fr/cesdp/CESFramDP2009.htmClassification JEL :...
Investors are constantly asking whether beating the market on a consistent basis is possible. There ...
Similarity measures play an important role in many data mining algorithms. To allow the use of such ...