缺乏原始数据的模拟技术:学习和模型回顾

IF 3.4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Inteligencia Artificial-Iberoamerical Journal of Artificial Intelligence Pub Date : 2006-12-11 DOI:10.4114/IA.V10I29.878
M. Quintana, José Hernandez Orallo, Ricardo Blanco Vega
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引用次数: 2

摘要

模仿技术(或多组合模型,CMM)基本上包括使用一般准确但难以理解的模型作为oracle来生成和标记随机数据集。该数据集与原始训练数据一起用于训练第二个可理解的模型,称为模拟模型。这种技术已经被用来为黑盒模型提供可理解性,而不会大大牺牲它们的准确性。在这项工作中,我们研究了在原始训练数据不可用的情况下的模拟应用。在这种情况下,我们首先根据最小消息长度原则(MML)确定随机数据集的最佳大小。该结果可用于专家系统的知识获取。其次,将模拟技术应用于模型修正,证明了在某些变化情况下,模拟模型可以作为原模型与新模型之间的过渡模型。
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La Técnica Mimética en Ausencia de Datos Originales: Aprendizaje y Revisión de Modelos
The mimetic technique (or Multiple Combined Models, CMM) basically consists of using a generally accurate but incomprehensible model as an oracle to generate and label a random data set. This dataset is used, along with the original training data, to train a second comprehensible model, known as the mimetic model. This technique has been used to provide understandability to black box models without considerably sacrificing their accuracy. In this work we study the mimetic application in a scenario in which the original training data is not available. In this context we first determine the optimal size of the random data set, according to the minimum message length principle (MML). This result can be used in knowledge acquisition for expert systems. Secondly we apply the mimetic technique to model revision and show that in some change situations the mimetic model can be used as a transition model between the original model and the new model.
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
15
审稿时长
8 weeks
期刊介绍: Inteligencia Artificial is a quarterly journal promoted and sponsored by the Spanish Association for Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. Particularly, the Journal welcomes: New approaches, techniques or methods to solve AI problems, which should include demonstrations of effectiveness oor improvement over existing methods. These demonstrations must be reproducible. Integration of different technologies or approaches to solve wide problems or belonging different areas. AI applications, which should describe in detail the problem or the scenario and the proposed solution, emphasizing its novelty and present a evaluation of the AI techniques that are applied. In addition to rapid publication and dissemination of unsolicited contributions, the journal is also committed to producing monographs, surveys or special issues on topics, methods or techniques of special relevance to the AI community. Inteligencia Artificial welcomes submissions written in English, Spaninsh or Portuguese. But at least, a title, summary and keywords in english should be included in each contribution.
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