scholarly journals EVALUATION OF INFRASTRUCTURE STOCK EFFECT BY CAUSAL DISCOVERY

Author(s):  
Go SUGIHARA ◽  
Makoto TSUKAI
IEEE Access ◽  
2021 ◽  
pp. 1-1
Author(s):  
Nicholas J. Matiasz ◽  
Justin Wood ◽  
Wei Wang ◽  
Alcino J. Silva ◽  
William Hsu
Keyword(s):  

2018 ◽  
Vol 4 (1) ◽  
Author(s):  
Christina Giarmatzi ◽  
Fabio Costa
Keyword(s):  

2011 ◽  
pp. 159-159
Author(s):  
Thomas R. Shultz ◽  
Scott E. Fahlman ◽  
Susan Craw ◽  
Periklis Andritsos ◽  
Panayiotis Tsaparas ◽  
...  
Keyword(s):  

2020 ◽  
Author(s):  
Andreas Gerhardus ◽  
Jakob Runge

<p>Scientific inquiry seeks to understand natural phenomena by understanding their underlying processes, i.e., by identifying cause and effect. In addition to mere scientific curiosity, an understanding of cause and effect relationships is necessary to predict the effect of changing dynamical regimes and for the attribution of extreme events to potential causes. It is thus an important question to ask how, in cases where controlled experiments are not feasible, causation can still be inferred from the statistical dependencies in observed time series.</p><p>A central obstacle for such an inference is the potential existence of unobserved causally relevant variables. Arguably, this is more likely to be the case than not, for example unmeasured deep oceanic variables in atmospheric processes. Unobserved variables can act as confounders (meaning they are a common cause of two or more observed variables) and thus introduce spurious, i.e., non-causal dependencies. Despite these complications, the last three decades have seen the development of so-called causal discovery algorithms (an example being FCI by Spirtes et al., 1999) that are often able to identify spurious associations and to distinguish them from genuine causation. This opens the possibility for a data-driven approach to infer cause and effect relationships among climate variables, thereby contributing to a better understanding of Earth's complex climate system.</p><p>These methods are, however, not yet well adapted to some specific challenges that climate time series often come with, e.g. strong autocorrelation, time lags and nonlinearities. To close this methodological gap, we generalize the ideas of the recent PCMCI causal discovery algorithm (Runge et al., 2019) to time series where unobserved causally relevant variables may exist (in contrast, PCMCI made the assumption of no confounding). Further, we present preliminary applications to modes of climate variability.</p>


2021 ◽  
Vol 0 (0) ◽  
pp. 0
Author(s):  
Ana Rita Nogueira ◽  
João Gama ◽  
Carlos Abreu Ferreira

2021 ◽  
Vol 113 (1) ◽  
pp. 107-135
Author(s):  
Bert Leuridan

Abstract Gregor Mendel, Thomas Hunt Morgan and experiments in classical geneticsIn the middle of the 19th century, Gregor Mendel performed a series of crosses with pea plants to investigate how hybrids are formed. Decades later, Thomas Hunt Morgan finalized the theory of classical genetics. An important aspect of Mendel’s and Morgan’s scientific approach is that they worked in a systematic, experimental fashion. But how did these experiments proceed? What is the relation between these experiments and Mendel’s and Morgan’s explanatory theories? What was their evidential value? Using present-day insights in the nature of experimentation I will show that the answer to these questions is fascinating but not obvious. Crossings in classical genetics lacked a crucial feature of traditional experiments for causal discovery: manipulation of the purported causes. Hence they were not traditional, ‘manipulative’ experiments, but ‘selective experiments’.


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