+
+ .. warning::
+
+ It is not safe to cache any of the matrices passed to
+ CVXOPT, because it can clobber them.
+
+ Returns
+ -------
+
+ matrix
+ A ``2*self.dimension()``-by-``(1 + self.dimension())`` matrix.
+
+ Examples
+ --------
+
+ >>> from dunshire import *
+ >>> K = NonnegativeOrthant(3)
+ >>> L = [[4,5,6],[7,8,9],[10,11,12]]
+ >>> e1 = [1,2,3]
+ >>> e2 = [1,1,1]
+ >>> SLG = SymmetricLinearGame(L, K, e1, e2)
+ >>> print(SLG.G())
+ [ 0.0000000 -1.0000000 0.0000000 0.0000000]
+ [ 0.0000000 0.0000000 -1.0000000 0.0000000]
+ [ 0.0000000 0.0000000 0.0000000 -1.0000000]
+ [ 1.0000000 -4.0000000 -5.0000000 -6.0000000]
+ [ 2.0000000 -7.0000000 -8.0000000 -9.0000000]
+ [ 3.0000000 -10.0000000 -11.0000000 -12.0000000]
+ <BLANKLINE>
+
+ """
+ identity_matrix = identity(self.dimension())
+ return append_row(append_col(self._zero(), -identity_matrix),
+ append_col(self.e1(), -self.L()))
+
+
+ def c(self):
+ """
+ Return the vector ``c`` used in our CVXOPT construction.
+
+ The column vector ``c`` appears in the objective function
+ value ``<c,x>`` in the statement of the CVXOPT conelp program.
+
+ .. warning::
+
+ It is not safe to cache any of the matrices passed to
+ CVXOPT, because it can clobber them.
+
+ Returns
+ -------
+
+ matrix
+ A ``self.dimension()``-by-``1`` column vector.
+
+ Examples
+ --------
+
+ >>> from dunshire import *
+ >>> K = NonnegativeOrthant(3)
+ >>> L = [[4,5,6],[7,8,9],[10,11,12]]
+ >>> e1 = [1,2,3]
+ >>> e2 = [1,1,1]
+ >>> SLG = SymmetricLinearGame(L, K, e1, e2)
+ >>> print(SLG.c())
+ [-1.0000000]
+ [ 0.0000000]
+ [ 0.0000000]
+ [ 0.0000000]
+ <BLANKLINE>
+
+ """
+ return matrix([-1, self._zero()])
+
+
+ def C(self):
+ """
+ Return the cone ``C`` used in our CVXOPT construction.
+
+ The cone ``C`` is the cone over which the conelp program takes
+ place.
+
+ Returns
+ -------
+
+ CartesianProduct
+ The cartesian product of ``K`` with itself.
+
+ Examples
+ --------
+
+ >>> from dunshire import *
+ >>> K = NonnegativeOrthant(3)
+ >>> L = [[4,5,6],[7,8,9],[10,11,12]]
+ >>> e1 = [1,2,3]
+ >>> e2 = [1,1,1]
+ >>> SLG = SymmetricLinearGame(L, K, e1, e2)
+ >>> print(SLG.C())
+ Cartesian product of dimension 6 with 2 factors:
+ * Nonnegative orthant in the real 3-space
+ * Nonnegative orthant in the real 3-space
+
+ """
+ return CartesianProduct(self._K, self._K)
+
+ def h(self):
+ r"""
+ Return the ``h`` vector used in our CVXOPT construction.
+
+ The ``h`` vector appears on the right-hand side of :math:`Gx + s
+ = h` in the statement of the CVXOPT conelp program.
+
+ .. warning::
+
+ It is not safe to cache any of the matrices passed to
+ CVXOPT, because it can clobber them.
+
+ Returns
+ -------
+
+ matrix
+ A ``2*self.dimension()``-by-``1`` column vector of zeros.
+
+ Examples
+ --------
+
+ >>> from dunshire import *
+ >>> K = NonnegativeOrthant(3)
+ >>> L = [[4,5,6],[7,8,9],[10,11,12]]
+ >>> e1 = [1,2,3]
+ >>> e2 = [1,1,1]
+ >>> SLG = SymmetricLinearGame(L, K, e1, e2)
+ >>> print(SLG.h())
+ [0.0000000]
+ [0.0000000]
+ [0.0000000]
+ [0.0000000]
+ [0.0000000]
+ [0.0000000]
+ <BLANKLINE>
+
+ """
+
+ return matrix([self._zero(), self._zero()])
+
+
+ @staticmethod
+ def b():
+ r"""
+ Return the ``b`` vector used in our CVXOPT construction.
+
+ The vector ``b`` appears on the right-hand side of :math:`Ax =
+ b` in the statement of the CVXOPT conelp program.
+
+ This method is static because the dimensions and entries of
+ ``b`` are known beforehand, and don't depend on any other
+ properties of the game.
+
+ .. warning::
+
+ It is not safe to cache any of the matrices passed to
+ CVXOPT, because it can clobber them.
+
+ Returns
+ -------
+
+ matrix
+ A ``1``-by-``1`` matrix containing a single entry ``1``.
+
+ Examples
+ --------
+
+ >>> from dunshire import *
+ >>> K = NonnegativeOrthant(3)
+ >>> L = [[4,5,6],[7,8,9],[10,11,12]]
+ >>> e1 = [1,2,3]
+ >>> e2 = [1,1,1]
+ >>> SLG = SymmetricLinearGame(L, K, e1, e2)
+ >>> print(SLG.b())
+ [1.0000000]
+ <BLANKLINE>
+
+ """
+ return matrix([1], tc='d')
+
+
+ def player1_start(self):
+ """
+ Return a feasible starting point for player one.
+
+ This starting point is for the CVXOPT formulation and not for
+ the original game. The basic premise is that if you scale
+ :meth:`e2` by the reciprocal of its squared norm, then you get a
+ point in :meth:`K` that makes a unit inner product with
+ :meth:`e2`. We then get to choose the primal objective function
+ value such that the constraint involving :meth:`L` is satisfied.
+
+ Returns
+ -------
+
+ dict
+ A dictionary with two keys, 'x' and 's', which contain the
+ vectors of the same name in the CVXOPT primal problem
+ formulation.
+
+ The vector ``x`` consists of the primal objective function
+ value concatenated with the strategy (for player one) that
+ achieves it. The vector ``s`` is essentially a dummy
+ variable, and is computed from the equality constraing in
+ the CVXOPT primal problem.
+
+ """
+ p = self.e2() / (norm(self.e2()) ** 2)
+ dist = self.K().ball_radius(self.e1())
+ nu = - self._L_specnorm()/(dist*norm(self.e2()))
+ x = matrix([nu, p], (self.dimension() + 1, 1))
+ s = - self.G()*x
+
+ return {'x': x, 's': s}
+
+
+ def player2_start(self):
+ """
+ Return a feasible starting point for player two.
+
+ This starting point is for the CVXOPT formulation and not for
+ the original game. The basic premise is that if you scale
+ :meth:`e1` by the reciprocal of its squared norm, then you get a
+ point in :meth:`K` that makes a unit inner product with
+ :meth:`e1`. We then get to choose the dual objective function
+ value such that the constraint involving :meth:`L` is satisfied.
+
+ Returns
+ -------
+
+ dict
+ A dictionary with two keys, 'y' and 'z', which contain the
+ vectors of the same name in the CVXOPT dual problem
+ formulation.
+
+ The ``1``-by-``1`` vector ``y`` consists of the dual
+ objective function value. The last :meth:`dimension` entries
+ of the vector ``z`` contain the strategy (for player two)
+ that achieves it. The remaining entries of ``z`` are
+ essentially dummy variables, computed from the equality
+ constraint in the CVXOPT dual problem.
+
+ """
+ q = self.e1() / (norm(self.e1()) ** 2)
+ dist = self.K().ball_radius(self.e2())
+ omega = self._L_specnorm()/(dist*norm(self.e1()))
+ y = matrix([omega])
+ z2 = q
+ z1 = y*self.e2() - self.L().trans()*z2
+ z = matrix([z1, z2], (self.dimension()*2, 1))
+
+ return {'y': y, 'z': z}
+
+
+ def _L_specnorm(self):