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<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'>Dear all, <o:p></o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'><o:p> </o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'>I have two questions regarding clusteranalysis.<o:p></o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'><o:p> </o:p></span></font></p>
<ol style='margin-top:0cm' start=1 type=1>
<li class=MsoNormal style='mso-list:l0 level1 lfo3'><font size=2 face=Arial><span
lang=EN-GB style='font-size:10.0pt;font-family:Arial'>When running
‘freqstatistics’ on time frequency/frequency data with the
method ‘montecarlo’ which clusterthreshold would you use? I
would think that with the data usually not being normally distributed you
would use a nonparametric threshold. However, the default value for clusterthreshold
is ‘parametric’.<o:p></o:p></span></font></li>
<ol style='margin-top:0cm' start=1 type=a>
<li class=MsoNormal style='mso-list:l0 level2 lfo3'><font size=2 face=Arial><span
lang=EN-GB style='font-size:10.0pt;font-family:Arial'>Is there documentation
about what ‘nonparametric_individual’ and
‘nonparametric_common’ mean? If yes, where can I find it?<o:p></o:p></span></font></li>
</ol>
<li class=MsoNormal style='mso-list:l0 level1 lfo3'><font size=2 face=Arial><span
lang=EN-GB style='font-size:10.0pt;font-family:Arial'>I am looking at data
from our old Neuromag 122 system and used the function
‘neighbourselection’ to define neighbouring channels. When
checking what ‘neighbourselection’ did I found that the
neighbours identified were not only the sensors surrounding the sensor of
interest, but also sensors lying far away from it. Also, not all sensors
surrounding the one of interest were included as neighbours. I used the
gradfile generated by ‘mne2grad122’ as cfg.grad and different values
for neighbourdist (4 and 3). Does anybody have a solution for this? <o:p></o:p></span></font></li>
</ol>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'><o:p> </o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'>Thanks in advance for your help!<o:p></o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'><o:p> </o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'>Nina<o:p></o:p></span></font></p>
<p class=MsoNormal><font size=2 face=Arial><span lang=EN-GB style='font-size:
10.0pt;font-family:Arial'><o:p> </o:p></span></font></p>
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<p>----------------------------------</p>
<p>The aim of this list is to facilitate the discussion between users of the FieldTrip toolbox, to share experiences and to discuss new ideas for MEG and EEG analysis.</p>
<p> http://listserv.surfnet.nl/archives/fieldtrip.html</p>
<p> http://www.ru.nl/fcdonders/fieldtrip/</p>