This thesis investigates the quality of randomly collected data by employing a framework built on information-based complexity, a field related to the numerical analysis of abstract problems. The quality or power of gathered information is measured by its radius which is the uniform error obtainable by the best possible algorithm using it. The main aim is to present progress towards understanding the power of random information for approximation and integration problems.
翻译:该论文利用基于信息的复杂性这一与抽象问题数字分析有关的领域,调查随机收集数据的质量;收集信息的质量或功率以其半径衡量,半径是使用该半径的最佳算法所能取得的统一错误;其主要目的是介绍在了解随机信息对近似和集成问题的力量方面取得的进展。