Recurrence-Time History Matching (RTHM) is a method for
graphically and statistically evaluating relationships between
neurons in a local network, based on their temporal firing
patterns. The central algorithm is derived from similarity
measures, specifically the Hausdorff metric. RTHM enhances
the resolution and sensitivity of the traditional cross-correlogram.
Software currently implemented includes RTHM analysis and
graphical display, statistical analysis of correlational
strength, spike-train manipulation, and a purely stochastic
model for generating artificial spike trains for testing
analytical methods. |