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    title = "Causal Emergence: When Distortions in a Map Obscure the Territory",
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    title = "A contemporary example of Reichenbachian coordination",
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    title = "Intracranial electrical stimulation alters meso-scale network integration as a function of network topology",
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    title = "Causal Mapping of Emotion Networks in the Human Brain: Framework and Initial Findings",
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    title = "Approximate Causal Abstraction",
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@article{https://resolver.caltech.edu/CaltechAUTHORS:20171109-074339105,
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