We report new results about the impact of noise on information processing with application to financial markets. These results quantify the tradeoff between the amount of data and the noise level in the data. They also provide estimates for the performance of a learning system in terms of the noise level. We use these results to derive a method for detecting the change in market volatility from period to period. We successfully apply these results to the four major foreign exchange (FX) markets. The results hold for linear as well as nonlinear learning models and algorithms and for different noise models
In this research we investigate the behavior of noise traders and their impact on the market. We do ...
Bayesian learning provides the core concept of processing noisy information. In standard Bayesian fr...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
What role does noise play in equity markets? Answering this question usually leads immediately to sp...
I use a present value framework to explore the e�ects of news (or noisy information) onstock prices ...
The lack of regulation and liquidity in crypto money markets causes higher volatility compared to ot...
What role does noise play in equity markets? Answering this question usually leads immediately to sp...
The main objective of this PhD dissertation is to set up new signal extraction techniques with appli...
Abstract We study the extent to which, in a laboratory financial market, noise trading can stem from...
This dissertation investigates the long-run effects of noise traders in financial markets. Noise tr...
We develop a framework in which information about firm value is noisily observed. Investors are then...
A dynamic model of financial markets with learning is demonstrated to produce a self-organized syste...
The literature provides ample evidence that the last decades have seen an increase in noise trader a...
We study the extent to which, in a laboratory \u85nancial market, noise trading can stem from subjec...
In time series problems, noise can be divided into two categories: dynamic noise which drives the pr...
In this research we investigate the behavior of noise traders and their impact on the market. We do ...
Bayesian learning provides the core concept of processing noisy information. In standard Bayesian fr...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...
What role does noise play in equity markets? Answering this question usually leads immediately to sp...
I use a present value framework to explore the e�ects of news (or noisy information) onstock prices ...
The lack of regulation and liquidity in crypto money markets causes higher volatility compared to ot...
What role does noise play in equity markets? Answering this question usually leads immediately to sp...
The main objective of this PhD dissertation is to set up new signal extraction techniques with appli...
Abstract We study the extent to which, in a laboratory financial market, noise trading can stem from...
This dissertation investigates the long-run effects of noise traders in financial markets. Noise tr...
We develop a framework in which information about firm value is noisily observed. Investors are then...
A dynamic model of financial markets with learning is demonstrated to produce a self-organized syste...
The literature provides ample evidence that the last decades have seen an increase in noise trader a...
We study the extent to which, in a laboratory \u85nancial market, noise trading can stem from subjec...
In time series problems, noise can be divided into two categories: dynamic noise which drives the pr...
In this research we investigate the behavior of noise traders and their impact on the market. We do ...
Bayesian learning provides the core concept of processing noisy information. In standard Bayesian fr...
Volatility dynamics of wavelet - filtered stock price time series is studied. Using the universal th...