Made storing negative simplices in StaticPersistence parameter-based, so that DynamicPersistence works again
.. _cohomology-parametrization:
Parametrizing a point set using circle valued functions
=======================================================
The procedure described below is explained in detail in [dSVJ09]_.
.. program:: rips-pairwise-cohomology
One can use :sfile:`examples/cohomology/rips-pairwise-cohomology.cpp` to compute
persistent pairing of the Rips filtration using the persistent cohomology
algorithm. It takes as input a file containing a point set in Euclidean space
(one per line) as well as the following command-line flags:
.. cmdoption:: -p, --prime
The prime to use in the computation (defaults to 11).
.. cmdoption:: -m, --max-distance
Maximum cutoff parameter up to which to compute the complex.
.. cmdoption:: -s, --skeleton-dimension
Skeleton to compute; persistent pairs output will be this number minus 1
(defaults to 2).
.. cmdoption:: -b, --boundary
Filename where to output the boundary matrix.
.. cmdoption:: -c, --cocycle
Prefix of the filenames where to output the 1-dimensional cocycles.
.. cmdoption:: -v, --vertices
Filename where to output the simplex vertex mapping.
.. cmdoption:: -d, --diagram
Filename where to output the persistence diagram.
For example::
rips-pairwise-cohomology points.txt -m 1 -b points.bdry -c points -v points.vrt -d points.dgm
Assuming that at the threshold value of 1 (``-m 1`` above) Rips complex contains
1-dimensional cocycles, they will be output into filenames of the form
``points-0.ccl``, ``points-1.ccl``, etc.
Subsequently one can use :sfile:`examples/cohomology/cocycle.py` to assign to
each vertex of the input point set a circle-valued function. It takes the
boundary matrix, cocycle, and simplex-vertex map as an input (all produced at
the previous step)::
cocycle.py points.bdry points-0.ccl points.vrt
The above command outputs a file ``points-0.val`` which contains values assigned
to the input points (the lines match the lines of the input file
``points.txt``, but also contains the indices).
Plotting
--------
Two auxilliary tools allow one to visualize the values assigned to the points
(using Matplotlib_): :sfile:`tools/plot-values/plot.py` and
:sfile:`tools/plot-values/scatter.py`::
plot.py points-0.val points.txt scatter.py points-0.val points-1.val
.. _Matplotlib: http://matplotlib.sourceforge.net/
Dependency
----------
The Python `LSQR code`_ (ported from the `Stanford MATLAB implementation`_ to
Python by `Jeffery Kline`_) included with Dionysus, and used in
:sfile:`examples/cohomology/cocycle.py`, requires CVXOPT_.
.. _`LSQR code`: http://pages.cs.wisc.edu/~kline/cvxopt/
.. _CVXOPT: http://abel.ee.ucla.edu/cvxopt/
.. _`Stanford MATLAB implementation`: http://www.stanford.edu/group/SOL/software/lsqr.html
.. _`Jeffery Kline`: http://pages.cs.wisc.edu/~kline/
.. _rips-pairwise-cohomology:
Python cohomology computation
-----------------------------
:sfile:`examples/cohomology/rips-pairwise-cohomology.py` gives an example of the
same computation performed in Python (but with the output in a different format).
After the simplicial complex is computed in a list `simplices`, and the list is
sorted with respect to the Rips filtration order, the simplices are inserted
into the :class:`CohomologyPersistence` one by one::
# list simplices is created
ch = CohomologyPersistence(prime)
complex = {}
for s in simplices:
i,d = ch.add([complex[sb] for sb in s.boundary], (s.dimension(), s.data))
complex[s] = i
if d:
dimension, birth = d
print dimension, birth, s.data
# else birth
Above dictionary `complex` maintains the map of simplices to indices returned by
:meth:`CohomologyPersistence.add`. The pair `(dimension, data)` is used as the
birth value. Here `data` is the value associated with the simplex in the Rips
filtration. The pair is returned back if a death occurs, and is printed on the
standard output. After the for loop finishes, one may output infinite
persistence classes with the following for loop::
for ccl in ch:
dimension, birth = ccl.birth
if dimension >= skeleton: continue
print dimension, birth, 'inf' # dimension, simplex data = birth
Naturally one may iterate over `ccl` which is of type :class:`Cocycle` and
extract more information. For example, this is necessary to get the coefficients
that serve as the input for :sfile:`examples/cohomology/cocycle.py`.