Ejemplo n.º 1
0
    def test_cached_kernel(self):
        nchunks = 5
        n = 50 * nchunks
        d = Dataset(np.random.randn(n, 132))
        d.sa.chunks = np.random.randint(nchunks, size=n)

        # We'll compare against an Rbf just because it has a parameter to change
        rk = npK.RbfKernel(sigma=1.5)

        # Assure two kernels are independent for this test
        ck = CachedKernel(kernel=npK.RbfKernel(sigma=1.5))
        ck.compute(d)  # Initial cache of all data

        self.assertTrue(ck._recomputed,
                        'CachedKernel was not initially computed')

        # Try some splitting
        for chunk in [d[d.sa.chunks == i] for i in range(nchunks)]:
            rk.compute(chunk)
            ck.compute(chunk)
            self.kernel_equiv(rk, ck)  #, accuracy=1e-12)
            self.failIf(ck._recomputed,
                        "CachedKernel incorrectly recomputed it's kernel")

        # Test what happens when a parameter changes
        ck.params.sigma = 3.5
        ck.compute(d)
        self.assertTrue(ck._recomputed,
                        "CachedKernel doesn't recompute on kernel change")
        rk.params.sigma = 3.5
        rk.compute(d)
        self.assertTrue(np.all(rk._k == ck._k),
                        'Cached and rbf kernels disagree after kernel change')

        # Now test handling new data
        d2 = Dataset(np.random.randn(32, 43))
        ck.compute(d2)
        self.assertTrue(
            ck._recomputed,
            "CachedKernel did not automatically recompute new data")
        ck.compute(d)
        self.assertTrue(ck._recomputed,
                        "CachedKernel did not recompute old data which had\n" + \
                        "previously been computed, but had the cache overriden")
Ejemplo n.º 2
0
        def test_rbf_sg(self):
            d1 = np.random.randn(105, 32)
            d2 = np.random.randn(41, 32)
            sk = sgK.RbfSGKernel()
            nk = npK.RbfKernel()
            sigmavals = np.logspace(-2, 5, num=10)
            for s in sigmavals:
                sk.params.sigma = s
                nk.params.sigma = s
                sk.compute(d1, d2)
                nk.compute(d1, d2)

                self.kernel_equiv(nk, sk)