Tools
jajapy provides also few functions that can be useful in some contexts.
- jajapy.resolveRandom(m: list) int
Given a list of probabilities it returns the index of the one choosen according to the probabilities. Example: if m=[0.7,0.3], it will returns 0 with probability 0.7, and 1 with probability 0.3.
Parameters
- m: list of float
list of probabilities.
Returns
- int
the chosen index.
Examples
>>> import jajapy as ja >>> p = [0.2,0.6,0.15,0.05] >>> chosen = ja.resolveRandom(p) >>> print(chosen) 1
- jajapy.normalize(ll)
Normalizes a list of float such that the sum is equal to 1.0.
Parameters
- ll: list of float or 1-D narray
list of probabilities to normalize.
Returns
- list or 1-D narray
normalized list.
- jajapy.randomProbabilities(size: int) ndarray
Return of ndarray of length
sizeof probabilities.Parameters
- size: int
size of the output list.
Returns
- list of float
list of probabilities.
Raises
- ValueError
If size is strictly lower than 1.0.
- TypeError
If size is not an int.
Examples
>>> import jajapy as ja >>> p = ja.randomProbabilities(4) >>> print(p) array([0.3155861636575178, 0.11453783121165262, 0.5686125794652406, 0.001263425665589013])
- jajapy.normpdf(x: float, params: list, variation: float = 0.01) float
Returns the probability of
xunder a normal distribution returns of parametersparams. Since this probability should be 0 it returns in fact the probability that the normal distribution gives us a value betweenx-variationandx+variation.Parameters
- x: float
the value of the normal distribution.
- params: list of two float.
the parameters of the distribution: [mean,sd].
- variation: float
the vicinity.
Returns
- float
the probability of
xunder a normal distribution returns of parametersparams.