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Data compression to define information content of hydrological time series

机译:数据压缩以定义水文时间序列的信息内容

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摘要

When inferring models from hydrological data or calibrating hydrological models, we are interested in the information content of those data to quantify how much can potentially be learned from them. In this work we take a perspective from (algorithmic) information theory, (A)IT, to discuss some underlying issues regarding this question. In the information-theoretical framework, there is a strong link between information content and data compression.We exploit this by using data compression performance as a time series analysis tool and highlight the analogy to information content, prediction and learning (understanding is compression). The analysis is performed on time series of a set of catchments. We discuss both the deeper foundation from algorithmic information theory, some practical results and the inherent difficulties in answering the following question: “How much information is contained in this data set?”. The conclusion is that the answer to this question can only be given once the following counter-questions have been answered: (1) information about which unknown quantities? and (2) what is your current state of knowledge/beliefs about those quantities? Quantifying information content of hydrological data is closely linked to the question of separating aleatoric and epistemic uncertainty and quantifying maximum possible model performance, as addressed in the current hydrological literature. The AIT perspective teaches us that it is impossible to answer this question objectively without specifying prior beliefs.
机译:从水文数据推断模型或对水文模型进行校准时,我们对这些数据的信息内容感兴趣,以量化可以从中学习多少。在这项工作中,我们从(算法)信息理论(A)IT的角度出发,讨论有关该问题的一些潜在问题。在信息理论框架中,信息内容与数据压缩之间存在紧密联系,我们通过将数据压缩性能用作时间序列分析工具来利用这一点,并强调了对信息内容,预测和学习的类比(理解为压缩)。该分析是根据一组流域的时间序列进行的。我们将讨论算法信息理论的更深层次基础,一些实际结果以及回答以下问题的固有困难:“此数据集中包含多少信息?”。结论是,只有在以下反问题得到回答后,才能给出该问题的答案:(1)有关哪些未知数量的信息? (2)您目前对这些数量的知识/信念是什么?量化水文数据的信息内容与分离无意识和认知不确定性以及量化最大可能模型性能的问题密切相关,正如当前水文学中所讨论的那样。 AIT的观点告诉我们,如果不先说明先验信念,就不可能客观地回答这个问题。

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