Ejemplo n.º 1
0
def trainsizes():
    crs = load_and_sort(config.trainsizeconfigs)

    for c, r in crs:
        print("Train size:", c.run.train_size)
        print("Error reduction:", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 2
0
def downsampling():
    crs = load_and_sort(config.downsamplingconfigs)

    for c, r in crs:
        print("Downsampling used:", c.embedding.downsampling)
        print("Error reduction", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 3
0
def negative():
    crs = load_and_sort(config.negativeconfigs)

    for c, r in crs:
        print("Negative sampling count:", c.embedding.negative)
        print("Error reduction", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 4
0
def estimator():
    crs = load_and_sort(config.estimatorconfigs)

    for c, r in crs:
        print("Estimator for word embedding:", c.embedding.estimator)
        print("Error reduction", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 5
0
def filter_skips():
    crs = load_and_sort(config.filter_skipsconfigs)

    for c, r in crs:
        print("Skips filtered:", c.gram.filter_skips)
        print("Error reduction:", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 6
0
def dimension():
    crs = load_and_sort(config.dimensionconfigs)

    for c, r in crs:
        print("Dimension:", c.embedding.dimension)
        print("Error reduction:", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 7
0
def window():
    crs = load_and_sort(config.windowconfigs)

    for c, r in crs:
        print("Window size:", c.embedding.window)
        print("Gram size:", c.gram.gram_size)
        print("Error reduction", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 8
0
def skipwords():
    crs = load_and_sort(config.skipwordconfigs)
    skipwordss = {c.gram.skipwords for (c, _) in crs}

    for skipwords in skipwordss:
        (c, r) = get_single_one(((c, r) for (c, r) in crs if c.gram.skipwords == skipwords))
        print("Skipwords:", *skipwords)
        print("Error reduction:", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 9
0
def default():
    print("File contents:")
    with gzip.open(resultpath(config.default_config), mode="rt") as f:
        for line in f:
            print(line, end="")

    print_barline()
    r = load_result(config.default_config).result
    print("Error reduction:", error_reduction(r))
    print("Prior correctness:", prior_correctness(r))
    print("Correctness:", correctness(r))
Ejemplo n.º 10
0
def interesting_embeddings2():
    crs = load_and_sort(config.interesting_embeddingconfigs2)

    for c, r in crs:
        print("Estimator:", c.embedding.estimator)
        print("Downsampling:", c.embedding.downsampling)
        print("Min count:", c.embedding.min_count)
        print("Error reduction", error_reduction(r))
        print("Prior correctness:", prior_correctness(r))
        print("Correctness:", correctness(r))
        print_barline()
Ejemplo n.º 11
0
def min_count():
    crs = load_and_sort(config.min_countconfigs)

    for filter_unknown in [True, False]:
        print("Grams with unknown words filtered:", filter_unknown)
        print_barline()
        relevant_crs = [(c, r) for (c, r) in crs if c.run.filter_unknown == filter_unknown]
        for c, r in relevant_crs:
            print("Min count for word embedding:", c.embedding.min_count)
            print("Error reduction", error_reduction(r))
            print("Prior correctness:", prior_correctness(r))
            print("Correctness:", correctness(r))
            print_barline()

        print_barline()