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Geysirhead (talk | contribs) removed Category:Evolutionary algorithms; added Category:Applications of evolutionary algorithms using HotCat |
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{{Short description|Increase in stock value}}
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{{original research|date=April 2011}}
{{essay-like|date=April 2011}}
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==IPO underpricing algorithms==
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The problem with developing algorithms to determine underpricing is dealing with [[Statistical noise|noisy]], complex, and unordered data sets. Additionally, people, environment, and various environmental conditions introduce irregularities in the data. To resolve these issues, researchers have found various techniques from [[artificial intelligence]] that [[normalization (statistics)|normalizes]] the data.
== Evolutionary models ==▼
▲==Evolutionary models==
▲[[Evolutionary programming]] is often paired with other algorithms e.g. [[artificial neural network|ANN]] to improve the robustness, reliability, and adaptability. Evolutionary models reduce error rates by allowing the numerical values to change within the fixed structure of the program. Designers provide their algorithms the variables, they then provide training data to help the program generate rules defined in the input space that make a prediction in the output variable space.
In this approach, the solution is made an individual and the population is made of alternatives. However, the outliers cause the individuals to act unexpectedly as they try to create rules to explain the whole set.
===Rule-based system===
For example, Quintana<ref>{{cite
* Underwriter prestige – Is the underwriter prestigious in role of lead manager? 1 for true, 0 otherwise.
* Price range width – The width of the non-binding reference price range offered to potential customers during the roadshow. This width can be interpreted as a sign of uncertainty regarding the real value of the company and a therefore, as a factor that could influence the initial return.
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===Two-layered evolutionary forecasting===
Luque<ref>{{cite book|last=Luque|first=Cristóbal|author2=David Quintana |author3=J. M. Valls |author4=Pedro Isasi
==Agent-based modelling==
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[[Category:Initial public offering]]
[[Category:Artificial neural networks]]
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