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摘要

这篇论文是对表示法、不确定精度和依赖性作为一个不容易分解的关联问题的初步探索。通常出于计算简单的原因,假设属性是相互独立的。类似地,是否存在依赖关系通常用一阶逻辑表示。现实情况是,通常假设产生的结果并不能很好地反映现实。多个相关属性的集成表示是困难的。通常,不同的属性具有不同的范围和线性。有时,规范化是有意义地表示不同类型数据的第一步,或者是组合不同类型数据的第一步。大多数价值并不清楚。需要一种表示依赖关系的方法。如何表示依赖性和不确定性的问题需要解决。在非常真实的意义上,依赖表示及其不精确既丰富又限制了我们如何处理问题的解决方案。
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Representation, uncertain imprecision, and dependency
The paper is an initial exploration of representation, uncertain precision, and dependency as a connected concern that is not easily decomposed. Often for reasons of computational simplicity, the assumption is made that attributes are independent of each other. Similarly, whether dependency exists is classically expressed in terms of first order logic. The actuality is that often the assumptions produce results that are not good representations of reality. An integrated representation of multiple, related attributes is difficult. Usually, different attributes have different ranges and linearity. Sometimes, normalization is a first step in meaningfully representing different kinds of data, or, as a first step to the combination different kinds of data. Most values are not crisply known. A method of dependency representation is needed. The issue of how to represent both dependency and uncertainty needs to be resolved. In a very real sense, dependency representations and their imprecision both enriches and constrains how we approach the solutions to our problems.
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