The mental map and memorability in dynamic graphs

Author(s):  
Daniel Archambault ◽  
Helen C. Purchase
Keyword(s):  
Religions ◽  
2021 ◽  
Vol 12 (6) ◽  
pp. 446
Author(s):  
Dieter Stern

This article explores the ways in which the newly founded and highly contested Christian confession of the Greek Catholics or Uniates employed strategies of mass mobilization to establish and maintain their position within a contested confessional terrain. The Greek Catholic clerics, above all monks of the Basilian order fostered an active policy of acquiring, founding and promoting Marian places of grace in order to create and invigorate a sense of belonging among their flock. The article argues that folk ideological notions concerning the spatial and physical conditions for the working of miracles were seized upon by the Greek Catholic faithful to establish a mental map of grace of their own. Especially, the Basilian order took particular care to organize mass events (annual pilgrimages, coronation celebrations for miraculous images) and promote Marian devotion through miracle reports and icon songs in an attempt to define what it means to be a Greek Catholic in terms of sacred territoriality.


2021 ◽  
Vol 15 (3) ◽  
pp. 1-35
Author(s):  
Muhammad Anis Uddin Nasir ◽  
Cigdem Aslay ◽  
Gianmarco De Francisci Morales ◽  
Matteo Riondato

“Perhaps he could dance first and think afterwards, if it isn’t too much to ask him.” S. Beckett, Waiting for Godot Given a labeled graph, the collection of -vertex induced connected subgraph patterns that appear in the graph more frequently than a user-specified minimum threshold provides a compact summary of the characteristics of the graph, and finds applications ranging from biology to network science. However, finding these patterns is challenging, even more so for dynamic graphs that evolve over time, due to the streaming nature of the input and the exponential time complexity of the problem. We study this task in both incremental and fully-dynamic streaming settings, where arbitrary edges can be added or removed from the graph. We present TipTap , a suite of algorithms to compute high-quality approximations of the frequent -vertex subgraphs w.r.t. a given threshold, at any time (i.e., point of the stream), with high probability. In contrast to existing state-of-the-art solutions that require iterating over the entire set of subgraphs in the vicinity of the updated edge, TipTap operates by efficiently maintaining a uniform sample of connected -vertex subgraphs, thanks to an optimized neighborhood-exploration procedure. We provide a theoretical analysis of the proposed algorithms in terms of their unbiasedness and of the sample size needed to obtain a desired approximation quality. Our analysis relies on sample-complexity bounds that use Vapnik–Chervonenkis dimension, a key concept from statistical learning theory, which allows us to derive a sufficient sample size that is independent from the size of the graph. The results of our empirical evaluation demonstrates that TipTap returns high-quality results more efficiently and accurately than existing baselines.


2021 ◽  
pp. 1-22
Author(s):  
Jaume Binimelis Sebastián ◽  
Antoni Ordinas Garau ◽  
Maurici Ruiz Pérez

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