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151 lines
5.9 KiB
ReStructuredText
151 lines
5.9 KiB
ReStructuredText
*************************************
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Gaussian process regression tutorial
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*************************************
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#.. ipython:: python
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#
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# print "Hello world"
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# X = [[1, 10], [1, 20], [1, -2]]
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We will see in this tutorial the basics for building a 1 dimensional and a 2 dimensional Gaussian process regression model, also known as a kriging model.
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We first import the libraries we will need: ::
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import pylab as pb
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pb.ion()
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import numpy as np
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import GPy
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1 dimensional model
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===================
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For this toy example, we assume we have the following inputs and outputs::
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X = np.random.uniform(-3.,3.,(20,1))
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Y = np.sin(X) + np.random.randn(20,1)*0.05
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Note that the observations Y include some noise.
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The first step is to define the covariance kernel we want to use for the model. We choose here a kernel based on Gaussian kernel (i.e. rbf or square exponential)::
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kernel = GPy.kern.rbf(D=1, variance=1., lengthscale=1.)
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The parameter ``D`` stands for the dimension of the input space. The parameters ``variance`` and ``lengthscale`` are optional. Note that many other kernels are implemented such as:
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* linear (``GPy.kern.linear``)
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* exponential kernel (``GPy.kern.exponential``)
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* Matern 3/2 (``GPy.kern.Matern32``)
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* Matern 5/2 (``GPy.kern.Matern52``)
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* spline (``GPy.kern.spline``)
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* and many others...
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The inputs required for building the model are the observations and the kernel::
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m = GPy.models.GP_regression(X,Y,kernel)
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By default, some observation noise is added to the modle. The functions ``print`` and ``plot`` give an insight of the model we have just build. The code::
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print m
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m.plot()
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gives the following output: ::
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Marginal log-likelihood: -4.479e+00
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Name | Value | Constraints | Ties | Prior
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-----------------------------------------------------------------
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rbf_variance | 1.0000 | | |
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rbf_lengthscale | 1.0000 | | |
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noise variance | 1.0000 | | |
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.. figure:: Figures/tuto_GP_regression_m1.png
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:align: center
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:height: 350px
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GP regression model before optimization of the parameters. The shaded region corresponds to 95% confidence intervals (ie +/- 2 standard deviation).
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The default values of the kernel parameters may not be relevant for the current data (for example, the confidence intervals seems too wide on the previous figure). A common approach is to find the values of the parameters that maximize the likelihood of the data. There are two steps for doing that with GPy:
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* Constrain the parameters of the kernel to ensure the kernel will always be a valid covariance structure (For example, we don\'t want some variances to be negative!).
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* Run the optimization
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There are various ways to constrain the parameters of the kernel. The most basic is to constrain all the parameters to be positive::
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m.constrain_positive('')
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but it is also possible to set a range on to constrain one parameter to be fixed. The parameter of ``m.constrain_positive`` is a regular expression that matches the name of the parameters to be constrained (as seen in ``print m``). For example, if we want the variance to be positive, the lengthscale to be in [1,10] and the noise variance to be fixed we can write::
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m.unconstrain('') # Required to remove the previous constrains
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m.constrain_positive('rbf_variance')
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m.constrain_bounded('lengthscale',1.,10. )
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m.constrain_fixed('noise',0.0025)
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Once the constrains have been imposed, the model can be optimized::
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m.optimize()
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If we want to perform some restarts to try to improve the result of the optimization, we can use the ``optimize_restart`` function::
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m.optimize_restarts(Nrestarts = 10)
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Once again, we can use ``print(m)`` and ``m.plot()`` to look at the resulting model resulting model::
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Marginal log-likelihood: 3.603e+01
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Name | Value | Constraints | Ties | Prior
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-----------------------------------------------------------------
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rbf_variance | 0.8151 | (+ve) | |
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rbf_lengthscale | 1.8037 | (1.0, 10.0) | |
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noise variance | 0.0025 | Fixed | |
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.. figure:: Figures/tuto_GP_regression_m2.png
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:align: center
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:height: 350px
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GP regression model after optimization of the parameters.
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2 dimensional example
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=====================
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Here is a 2 dimensional example::
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import pylab as pb
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pb.ion()
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import numpy as np
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import GPy
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# sample inputs and outputs
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X = np.random.uniform(-3.,3.,(50,2))
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Y = np.sin(X[:,0:1]) * np.sin(X[:,1:2])+np.random.randn(50,1)*0.05
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# define kernel
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ker = GPy.kern.Matern52(2,ARD=True) + GPy.kern.white(2)
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# create simple GP model
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m = GPy.models.GP_regression(X,Y,ker)
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# contrain all parameters to be positive
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m.constrain_positive('')
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# optimize and plot
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pb.figure()
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m.optimize('tnc', max_f_eval = 1000)
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m.plot()
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print(m)
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The flag ``ARD=True`` in the definition of the Matern kernel specifies that we want one lengthscale parameter per dimension (ie the GP is not isotropic). The output of the last two lines is::
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Marginal log-likelihood: 6.682e+01
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Name | Value | Constraints | Ties | Prior
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---------------------------------------------------------------------
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Mat52_variance | 0.3860 | (+ve) | |
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Mat52_lengthscale_0 | 2.0578 | (+ve) | |
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Mat52_lengthscale_1 | 1.8542 | (+ve) | |
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white_variance | 0.0023 | (+ve) | |
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noise variance | 0.0000 | (+ve) | |
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.. figure:: Figures/tuto_GP_regression_m3.png
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:align: center
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:height: 350px
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Contour plot of the best predictor (posterior mean).
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