Ejemplo n.º 1
0
def sparse_init_from_random(
    n_neighbors,
    inds,
    indptr,
    data,
    query_inds,
    query_indptr,
    query_data,
    heap,
    rng_state,
    sparse_dist,
):
    for i in range(query_indptr.shape[0] - 1):
        indices = rejection_sample(n_neighbors, indptr.shape[0] - 1, rng_state)

        to_inds = query_inds[query_indptr[i]:query_indptr[i + 1]]
        to_data = query_data[query_indptr[i]:query_indptr[i + 1]]

        for j in range(indices.shape[0]):
            if indices[j] < 0:
                continue

            from_inds = inds[indptr[indices[j]]:indptr[indices[j] + 1]]
            from_data = data[indptr[indices[j]]:indptr[indices[j] + 1]]

            d = sparse_dist(from_inds, from_data, to_inds, to_data)
            heap_push(heap, i, d, indices[j], 1)
    return
Ejemplo n.º 2
0
def nn_descent(
    data,
    n_neighbors,
    rng_state,
    max_candidates=50,
    dist=dist.euclidean,
    n_iters=10,
    delta=0.001,
    rho=0.5,
    rp_tree_init=True,
    leaf_array=None,
    low_memory=False,
    verbose=False,
):
    tried = set([(-1, -1)])

    current_graph = make_heap(data.shape[0], n_neighbors)
    for i in range(data.shape[0]):
        indices = rejection_sample(n_neighbors, data.shape[0], rng_state)
        for j in range(indices.shape[0]):
            d = dist(data[i], data[indices[j]])
            heap_push(current_graph, i, d, indices[j], 1)
            heap_push(current_graph, indices[j], d, i, 1)
            tried.add((i, indices[j]))
            tried.add((indices[j], i))

    if rp_tree_init:
        init_rp_tree(data, dist, current_graph, leaf_array, tried=tried)

    if low_memory:
        nn_descent_internal_low_memory(
            current_graph,
            data,
            n_neighbors,
            rng_state,
            max_candidates=max_candidates,
            dist=dist,
            n_iters=n_iters,
            delta=delta,
            rho=rho,
            verbose=verbose,
        )
    else:
        nn_descent_internal_high_memory(
            current_graph,
            data,
            n_neighbors,
            rng_state,
            tried,
            max_candidates=max_candidates,
            dist=dist,
            n_iters=n_iters,
            delta=delta,
            rho=rho,
            verbose=verbose,
        )

    return deheap_sort(current_graph)
Ejemplo n.º 3
0
 def init_from_random(n_neighbors, data, query_points, heap, rng_state):
     for i in range(query_points.shape[0]):
         indices = rejection_sample(n_neighbors, data.shape[0], rng_state)
         for j in range(indices.shape[0]):
             if indices[j] < 0:
                 continue
             d = dist(data[indices[j]], query_points[i], *dist_args)
             heap_push(heap, i, d, indices[j], 1)
     return
Ejemplo n.º 4
0
def init_current_graph(data, dist, n_neighbors, rng_state):
    current_graph = make_heap(data.shape[0], n_neighbors)
    for i in range(data.shape[0]):
        indices = rejection_sample(n_neighbors, data.shape[0], rng_state)
        for j in range(indices.shape[0]):
            d = dist(data[i], data[indices[j]])
            heap_push(current_graph, i, d, indices[j], 1)
            heap_push(current_graph, indices[j], d, i, 1)
    return current_graph
Ejemplo n.º 5
0
 def init_from_random(n_neighbors, data, query_points, heap, rng_state):
     for i in range(query_points.shape[0]):
         indices = rejection_sample(n_neighbors, data.shape[0], rng_state)
Ejemplo n.º 6
0
def sparse_nn_descent(
    inds,
    indptr,
    data,
    n_vertices,
    n_neighbors,
    rng_state,
    max_candidates=50,
    sparse_dist=umap.sparse.sparse_euclidean,
    n_iters=10,
    delta=0.001,
    rho=0.5,
    low_memory=False,
    rp_tree_init=True,
    leaf_array=None,
    verbose=False,
):

    tried = set([(-1, -1)])

    current_graph = make_heap(n_vertices, n_neighbors)
    for i in range(n_vertices):
        indices = rejection_sample(n_neighbors, n_vertices, rng_state)
        for j in range(indices.shape[0]):

            from_inds = inds[indptr[i]:indptr[i + 1]]
            from_data = data[indptr[i]:indptr[i + 1]]

            to_inds = inds[indptr[indices[j]]:indptr[indices[j] + 1]]
            to_data = data[indptr[indices[j]]:indptr[indices[j] + 1]]

            d = sparse_dist(from_inds, from_data, to_inds, to_data)

            heap_push(current_graph, i, d, indices[j], 1)
            heap_push(current_graph, indices[j], d, i, 1)
            tried.add((i, indices[j]))
            tried.add((indices[j], i))

    if rp_tree_init:
        sparse_init_rp_tree(
            inds,
            indptr,
            data,
            sparse_dist,
            current_graph,
            leaf_array,
            tried=tried,
        )

    if low_memory:
        sparse_nn_descent_internal_low_memory(
            current_graph,
            inds,
            indptr,
            data,
            n_vertices,
            n_neighbors,
            rng_state,
            max_candidates=max_candidates,
            sparse_dist=sparse_dist,
            n_iters=n_iters,
            delta=delta,
            rho=rho,
            verbose=verbose,
        )
    else:
        sparse_nn_descent_internal_high_memory(
            current_graph,
            inds,
            indptr,
            data,
            n_vertices,
            n_neighbors,
            rng_state,
            tried,
            max_candidates=max_candidates,
            sparse_dist=sparse_dist,
            n_iters=n_iters,
            delta=delta,
            rho=rho,
            verbose=verbose,
        )

    return deheap_sort(current_graph)
Ejemplo n.º 7
0
    def nn_descent(data,
                   n_neighbors,
                   rng_state,
                   max_candidates=50,
                   n_iters=10,
                   delta=0.001,
                   rho=0.5,
                   rp_tree_init=True,
                   leaf_array=None,
                   verbose=False):
        n_vertices = data.shape[0]

        current_graph = make_heap(data.shape[0], n_neighbors)
        for i in range(data.shape[0]):
            indices = rejection_sample(n_neighbors, data.shape[0], rng_state)
            for j in range(indices.shape[0]):
                d = dist(data[i], data[indices[j]], *dist_args)
                heap_push(current_graph, i, d, indices[j], 1)
                heap_push(current_graph, indices[j], d, i, 1)

        if rp_tree_init:
            for n in range(leaf_array.shape[0]):
                for i in range(leaf_array.shape[1]):
                    if leaf_array[n, i] < 0:
                        break
                    for j in range(i + 1, leaf_array.shape[1]):
                        if leaf_array[n, j] < 0:
                            break
                        d = dist(data[leaf_array[n, i]],
                                 data[leaf_array[n, j]], *dist_args)
                        heap_push(current_graph, leaf_array[n, i], d,
                                  leaf_array[n, j], 1)
                        heap_push(current_graph, leaf_array[n, j], d,
                                  leaf_array[n, i], 1)

        for n in range(n_iters):
            if verbose:
                print("\t", n, " / ", n_iters)

            candidate_neighbors = build_candidates(current_graph, n_vertices,
                                                   n_neighbors, max_candidates,
                                                   rng_state)

            c = 0
            for i in range(n_vertices):
                for j in range(max_candidates):
                    p = int(candidate_neighbors[0, i, j])
                    if p < 0 or tau_rand(rng_state) < rho:
                        continue
                    for k in range(max_candidates):
                        q = int(candidate_neighbors[0, i, k])
                        if q < 0 or not candidate_neighbors[2, i, j] and not \
                                candidate_neighbors[2, i, k]:
                            continue

                        d = dist(data[p], data[q], *dist_args)
                        c += heap_push(current_graph, p, d, q, 1)
                        c += heap_push(current_graph, q, d, p, 1)

            if c <= delta * n_neighbors * data.shape[0]:
                break

        return current_graph[:2]
Ejemplo n.º 8
0
    def nn_descent(
        inds,
        indptr,
        data,
        n_vertices,
        n_neighbors,
        rng_state,
        max_candidates=50,
        n_iters=10,
        delta=0.001,
        rho=0.5,
        rp_tree_init=True,
        leaf_array=None,
        verbose=False,
    ):

        current_graph = make_heap(n_vertices, n_neighbors)
        for i in range(n_vertices):
            indices = rejection_sample(n_neighbors, n_vertices, rng_state)
            for j in range(indices.shape[0]):

                from_inds = inds[indptr[i]:indptr[i + 1]]
                from_data = data[indptr[i]:indptr[i + 1]]

                to_inds = inds[indptr[indices[j]]:indptr[indices[j] + 1]]
                to_data = data[indptr[indices[j]]:indptr[indices[j] + 1]]

                d = sparse_dist(from_inds, from_data, to_inds, to_data,
                                *dist_args)

                heap_push(current_graph, i, d, indices[j], 1)
                heap_push(current_graph, indices[j], d, i, 1)

        if rp_tree_init:
            for n in range(leaf_array.shape[0]):
                for i in range(leaf_array.shape[1]):
                    if leaf_array[n, i] < 0:
                        break
                    for j in range(i + 1, leaf_array.shape[1]):
                        if leaf_array[n, j] < 0:
                            break

                        from_inds = inds[indptr[leaf_array[
                            n, i]]:indptr[leaf_array[n, i] + 1]]
                        from_data = data[indptr[leaf_array[
                            n, i]]:indptr[leaf_array[n, i] + 1]]

                        to_inds = inds[indptr[leaf_array[
                            n, j]]:indptr[leaf_array[n, j] + 1]]
                        to_data = data[indptr[leaf_array[
                            n, j]]:indptr[leaf_array[n, j] + 1]]

                        d = sparse_dist(from_inds, from_data, to_inds, to_data,
                                        *dist_args)

                        heap_push(current_graph, leaf_array[n, i], d,
                                  leaf_array[n, j], 1)
                        heap_push(current_graph, leaf_array[n, j], d,
                                  leaf_array[n, i], 1)

        for n in range(n_iters):
            if verbose:
                print("\t", n, " / ", n_iters)

            candidate_neighbors = build_candidates(current_graph, n_vertices,
                                                   n_neighbors, max_candidates,
                                                   rng_state)

            c = 0
            for i in range(n_vertices):
                for j in range(max_candidates):
                    p = int(candidate_neighbors[0, i, j])
                    if p < 0 or tau_rand(rng_state) < rho:
                        continue
                    for k in range(max_candidates):
                        q = int(candidate_neighbors[0, i, k])
                        if (q < 0 or not candidate_neighbors[2, i, j]
                                and not candidate_neighbors[2, i, k]):
                            continue

                        from_inds = inds[indptr[p]:indptr[p + 1]]
                        from_data = data[indptr[p]:indptr[p + 1]]

                        to_inds = inds[indptr[q]:indptr[q + 1]]
                        to_data = data[indptr[q]:indptr[q + 1]]

                        d = sparse_dist(from_inds, from_data, to_inds, to_data,
                                        *dist_args)

                        c += heap_push(current_graph, p, d, q, 1)
                        c += heap_push(current_graph, q, d, p, 1)

            if c <= delta * n_neighbors * n_vertices:
                break

        return deheap_sort(current_graph)