Skip to content

Official Repository of the code associated with the data analysis competition DecMeg2014

Notifications You must be signed in to change notification settings

FBK-NILab/DecMeg2014

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

38 Commits
 
 
 
 
 
 
 
 

Repository files navigation

DecMeg2014 - Decoding The Human Brain

This repository hosts benchmark code and other files for the DecMeg2014 competition. The competition is about decoding the human brain from magnetoencephalographic data. For further details see: https://www.kaggle.com/c/decoding-the-human-brain .

The code is available both in Python and Matlab, with minor differences.

Initially, two basic benchmarks are available:

  • benchmark_random : the code loads the files of the test set, collects the IDs of the trials in the test set and creates a valid submission file with them and by creating random class labels.

  • benchmark_pooling : here the underlying idea is to ignore the differences between the pattern of brain activity of the different subjects: that they are pooled together. the code loads the files of the train subjects in the train and of the test subjects in the test set. Then it creates a simple feature space by keeping only the data of the first 0.5sec from when the stimulus starts and then concatenating all the 306 timeseries into one feature vector. After a simple z-scoring of each feature, a linear classifier is trained on the train set and the class labels of the test set are predicted. A valid submission file is created from the predicted class labels.

To run the benchmarks,

  1. Download and unzip the train data and the test data from the competition website. Note that not all the training data are necessary to run the benchmarks.

  2. Download the code of this repository.

  3. For Python: enter the "python" directory and run python benchmark_random.py or python benchmark_pooling.py. The pooling benchmark may take several minutes to run, depending on the number of input subjects you specify. The data are expected to be in "python/data/".

Each benchmark creates a file "submission.csv".

There are also some scripts to visualise how classification accuracy varies from one location to another. These files are meant for visualisation purpose. Here follows a brief description:

  • accuracy_map : creates accuracy sensor maps from the data of one subject. The decoding accuracy at each sensor is represented by a color at its location. The decoding accuracy at a sensor is the cross-validated accuracy using the timeseries of that sensor only. Notice that three maps are generated. One has all 306 sensors. One has only magnetometers. One has only gradiometers (in pairs). Showing separate sensor maps for magnetometers and (pairs of) magnetometers is typical in MEG data analysis.
  • Vectorview-all.lout: text file with the 2D approximate coordinates of each sensor. Used by accuracy_map.
  • NeuroMagSensorsDeviceSpace.mat : this file contains the 3D locations of each sensor and the 3D directions along which each sensor measures the magnetic field. The numbers are related to the Neuromag VectorView system used in the experiment where MEG data were collected. This file is kindly provided by Prof.Rik Henson and can be freely used/distributed.
  • neuromag_vectorview_3d_layout : just a few lines of code to display the information in NeuroMagSensorsDeviceSpace.mat, in 3D using mayavi.

About

Official Repository of the code associated with the data analysis competition DecMeg2014

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 3

  •  
  •  
  •