Last modified by abonard on 2025/04/10 15:14

From version 10.1
edited by abonard
on 2025/04/10 15:14
Change comment: There is no comment for this version
To version 14.1
edited by abonard
on 2025/04/10 15:14
Change comment: There is no comment for this version

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2 2  
3 3  * ((( ==== **[[Beginner >>||anchor = "HBeginner-1"]]** ==== )))
4 4  
5 +* ((( ==== **[[Advanced >>||anchor = "HAdvanced-1"]]** ==== )))
6 +
5 5  === **Beginner** ===
6 6  
7 7  === [[Statistics of spike trains>>https://elephant.readthedocs.io/en/latest/tutorials/statistics.html||rel=" noopener noreferrer" target="_blank"]] ===
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9 9  **Level**: beginner(%%) **Type**: user documentation
10 10  
11 11  This notebook provides an overview of the functions provided by the elephant statistics module.
14 +=== **Advanced** ===
12 12  
16 +=== [[Spike Pattern Detection and Evaluation (SPADE)>>https://elephant.readthedocs.io/en/latest/tutorials/spade.html||rel=" noopener noreferrer" target="_blank"]] ===
17 +
18 +**Level**: advanced(%%) **Type**: user documentation
19 +
20 +SPADE is a method to detect repeated spatio-temporal activity patterns in parallel spike train data that occur in excess to chance expectation. In this tutorial, we will use SPADE to detect the simplest type of such patterns, synchronous events that are found across a subset of the neurons considered.
21 +=== [[The Unitary Events Analysis>>https://elephant.readthedocs.io/en/latest/tutorials/unitary_event_analysis.html||rel=" noopener noreferrer" target="_blank"]] ===
22 +
23 +**Level**: advanced(%%) **Type**: user documentation
24 +
25 +The Unitary Event analysis detects coordinated spiking activity that occurs significantly more often than predicted by the firing rates of neurons alone. It’s therefore superior to simple statistics. This tutorial will show you how to use this analysis in Elephant.
26 +=== [[Gaussian Process Factor Analysis (GPFA)>>https://elephant.readthedocs.io/en/latest/tutorials/gpfa.html||rel=" noopener noreferrer" target="_blank"]] ===
27 +
28 +**Level**: advanced(%%) **Type**: user documentation
29 +
30 +This tutorial illustrates the usage of the gpfa.GPFA() class implemented in elephant, through its applications to synthetic spike train data, of which the ground truth low-dimensional structure is known.
31 +=== [[Time-domain Granger Causality>>https://elephant.readthedocs.io/en/latest/tutorials/granger_causality.html||rel=" noopener noreferrer" target="_blank"]] ===
32 +
33 +**Level**: advanced(%%) **Type**: user documentation
34 +
35 +The Granger causality is a method to determine functional connectivity between time-series using autoregressive modelling.
36 +