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Machine learning answers:
Get in or out of the stock market?


 
  
A high-tech startup has developed a computerized machine learning technique to predict the stock market. It now answers the biggest investment question.


Stock Market contact: Kevin Pratt, Founder and Chief Scientist
ZZAlpha LTD, 866-630-7025 x705, kevin.pratt@zzalpha.com
www.zzalpha.com    www.zzETF.com

Tucson Arizona Oct 5, 2011. A high-tech startup has developed a computerized machine learning technique to predict the stock market. It now answers the biggest investment question: Get in or out of the market?

"We extend the same advanced pattern detection techniques used to decode the genome and forecast next week's weather," says Kevin Pratt, the ZZAlpha LTD. founder and chief scientist. "The technique uses half a billion pieces of data and makes 1.8 trillion calculations every night to learn changing market dynamics."

Pratt spent ten years designing sophisticated pattern recognition, 'big data' and cloud software for US Defense and Intelligence Agencies. He founded ZZAlpha LTD. in 2010 after leaving technology giant SAIC.

Getting the answer right to this big "In or Out" question has meant 10% annualized returns since the end of 2006 with 99.7% statistical confidence.

"We think this 'big question' forecast helps investors who lack the huge resources of hedge funds or the inside information that taints Wall Street. The "In or Out" forecast is easy to apply using safe ETFs (exchange traded funds) and has supported a respectable return over 10%," says Pratt.

ZZAlpha does not buy or sell stocks or ETFs, is not a financial advisor, and does not handle client funds. Its business is providing trusted information to subscribers.

Additional background at www.zzalpha.com and http://www.zzETF.com


KDnuggets Home » News » 2011 » Oct » News Briefs » Machine learning answers: Get in or out of the stock market?  ( < Prev | 11:n24 | Next > )