Python package for information theory.
Project description
dit is a Python package for information theory.
- Documentation:
- Downloads:
- Dependencies:
Python 2.7, 3.3, 3.4, 3.5, or 3.6
boltons
contextlib2
debtcollector
networkx
numpy
prettytable
scipy
six
- Optional Dependencies:
colorama
cython
numdifftools
- Note:
The cython extensions are currently not supported on windows. Please install using the --nocython option.
- Install:
The easiest way to install is:
pip install dit
Alternatively, you can clone this repository, move into the newly created dit directory, and then install the package:
git clone https://github.com/dit/dit.git cd dit pip install .
- Mailing list:
None
- Code and bug tracker:
- License:
BSD 2-Clause, see LICENSE.txt for details.
Quickstart
The basic usage of dit corresponds to creating distributions, modifying them if need be, and then computing properties of those distributions. First, we import:
>>> import dit
Suppose we have a really thick coin, one so thick that there is a reasonable chance of it landing on its edge. Here is how we might represent the coin in dit.
>>> d = dit.Distribution(['H', 'T', 'E'], [.4, .4, .2])
>>> print d
Class: Distribution
Alphabet: ('E', 'H', 'T') for all rvs
Base: linear
Outcome Class: str
Outcome Length: 1
RV Names: None
x p(x)
E 0.2
H 0.4
T 0.4
Calculate the probability of H and also of the combination H or T.
>>> d['H']
0.4
>>> d.event_probability(['H','T'])
0.8
Calculate the Shannon entropy and extropy of the joint distribution.
>>> dit.shannon.entropy(d)
1.5219280948873621
>>> dit.other.extropy(d)
1.1419011889093373
Create a distribution where Z = xor(X, Y).
>>> import dit.example_dists
>>> d = dit.example_dists.Xor()
>>> d.set_rv_names(['X', 'Y', 'Z'])
>>> print d
Class: Distribution
Alphabet: ('0', '1') for all rvs
Base: linear
Outcome Class: str
Outcome Length: 3
RV Names: ('X', 'Y', 'Z')
x p(x)
000 0.25
011 0.25
101 0.25
110 0.25
Calculate the Shannon mutual informations I[X:Z], I[Y:Z], and I[X,Y:Z].
>>> dit.shannon.mutual_information(d, ['X'], ['Z'])
0.0
>>> dit.shannon.mutual_information(d, ['Y'], ['Z'])
0.0
>>> dit.shannon.mutual_information(d, ['X', 'Y'], ['Z'])
1.0
Calculate the marginal distribution P(X,Z). Then print its probabilities as fractions, showing the mask.
>>> d2 = d.marginal(['X', 'Z'])
>>> print d2.to_string(show_mask=True, exact=True)
Class: Distribution
Alphabet: ('0', '1') for all rvs
Base: linear
Outcome Class: str
Outcome Length: 2 (mask: 3)
RV Names: ('X', 'Z')
x p(x)
0*0 1/4
0*1 1/4
1*0 1/4
1*1 1/4
Convert the distribution probabilities to log (base 3.5) probabilities, and access its probability mass function.
>>> d2.set_base(3.5)
>>> d2.pmf
array([-1.10658951, -1.10658951, -1.10658951, -1.10658951])
Draw 5 random samples from this distribution.
>>> dit.math.prng.seed(1)
>>> d2.rand(5)
['01', '10', '00', '01', '00']
Enjoy!
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distributions
Hashes for dit-1.0.0.dev26-py2.py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 68ea83656910ca84d796b62e705e7ffb5c0b9dcaffb6a013e91beda0a335393e |
|
MD5 | e2418fe741cbc9fbc5f2d70a5077278d |
|
BLAKE2b-256 | 637f1b2d7f045781b155534659d5e8da92a7d4a7bd3a675b7db1f76d7010f7be |
Hashes for dit-1.0.0.dev26-cp36-cp36m-macosx_10_12_x86_64.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | cf1cf1f16ff8269476c3775c7b0d61a6fdbbbda9168633aacbe1e6e22199d5af |
|
MD5 | 4a985669d5ec9eb9ccf92b2b5265f85a |
|
BLAKE2b-256 | 7be880f84df65cba0e3d8f618006240c8e03c06b3c36109649878814cc3b7beb |
Hashes for dit-1.0.0.dev26-cp27-cp27m-macosx_10_12_x86_64.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | ef2a96c0e94b13fa7b9d098eb0ef7639deb079a32b32dc349b0083df31ee77aa |
|
MD5 | f32e49b1e35c1383d3445c9684508998 |
|
BLAKE2b-256 | 42ff91c576a6aafe6113d8368dd45baef638c707ec3d68098b905ccb24d302e9 |