使用合成数据库生成概要文件的建议

Andres Viscaino - Quito, L. Serpa-Andrade
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摘要

缺乏数据来执行各种模型,为人工智能提供数据,你可以在一组数据中获得或发现各种行为模式。因此,由于缺乏数据,系统没有得到足够大的数据来满足其学习功能,呈现出一个综合数据库,该数据库被参数化,限制了文字运动和语言元素的特征,从而形成了一组组合,这些组合将成为AI的模型。在应用具有相应限制的第一个过滤器时,所有这些都产生了777,600个组合,当采用77304个有效组合时,应用第二个过滤器,使用剩余的限制,为生成将提供给AI的合成数据库提供57,672个有效组合。结论是,合成数据的生成有助于根据其重要性或多或少地创建与真实数据相似的数据,从而确保数量而不依赖于真实数据或原始数据。
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Proposal for the Generation of Profiles using a Synthetic Database
The lack of data to perform various models that feed an artificial intelligence with which you can get or discover various patterns of behavior in a set of data. Therefore, due to this lack of data, the systems are not well nourished with data large enough to fulfill its learning function, presenting a synthetic database which is parameterized with restrictions on the characteristics of graphomotor and language elements, which develops a set of combinations that will be the model for the AI. As effect to all this gave a commensurable amount of 777,600 combinations at the moment of applying the first filter with the respective restrictions, when taking the valid combinations that are 77304 a second filter is applied with the remaining restrictions that gave 57,672 valid combinations for the generation of the synthetic database that will feed the AI. It is concluded that the generation of synthetic data helps to create, according to its importance, more or less similar to real data and in this way ensures a quantity and no dependence on real or original data.
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