
Public
release date: 14-Mar-2008
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Contact: Ping-Chen Lin
lety@cc.kuas.edu.tw
Inderscience Publishers
Many gamblers claim to have a "system",
whether they're shooting craps, backing horses, or punting on the stock
market. Now, researchers in Taiwan have devised an approach to spotting when
a company is likely to fail based on the principles of natural selection.
They report details of their system in a forthcoming issue of the
International Journal of Electronic Finance.
Ping-Chen Lin of the National Kaohsiung
University of Applied Sciences in Kaohsiung and Jiah-Shing Chen of the
National Central University, Jhongli, in Taiwan, explain how the financial
status of any company can be of interest not only to its owners and
employees but to a range of creditors, stockholders, banks, and individual
investors. However, there are so many changing and interconnected factors
that can lead to success or failure that it is usually considered an
impossible task to predict whether a company will fail.
The researchers have now borrowed some of the
principles of evolutionary biology to come up with a computer algorithm to
make such predictions possible. They feed different variables, such as
earnings per share, liabilities and net income, into their genetic-based
hybrid algorithm, which assigns a weighting to each value. The output of the
algorithm is a new set of variables that are then selected for how well they
fit the next set of financial results from the company. Those that fail are
discarded, or reduced in weight, and those that match the actual results
more closely are fed back into the algorithm for the next round.
By using actual data from successful and
failed companies and feeding this into the algorithm the researchers build
up the fittest set of variables and weightings. This allows the algorithm to
evolve so that it can then predict the financial future of any given company
based on current income and expenditure, and tax obligations.
The team has blind tested the predictive power
of their system on several companies successfully. "Our experimental results
show that this hybrid approach obtains better prediction performance than
when using a single approach effectively," the researchers say.
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