The Cosine distance for real valued features x and x’ is the similarity as measured by their angle.
where where \(\Vert \cdot\Vert_2\) is the Euclidean norm.
Imagine we have files with data. We create CDenseFeatures (here 64 bit floats aka RealFeatures) as
features_a = RealFeatures(f_feats_a)
features_b = RealFeatures(f_feats_b)
features_a = RealFeatures(f_feats_a);
features_b = RealFeatures(f_feats_b);
RealFeatures features_a = new RealFeatures(f_feats_a);
RealFeatures features_b = new RealFeatures(f_feats_b);
features_a = Modshogun::RealFeatures.new f_feats_a
features_b = Modshogun::RealFeatures.new f_feats_b
features_a <- RealFeatures(f_feats_a)
features_b <- RealFeatures(f_feats_b)
features_a = modshogun.RealFeatures(f_feats_a)
features_b = modshogun.RealFeatures(f_feats_b)
RealFeatures features_a = new RealFeatures(f_feats_a);
RealFeatures features_b = new RealFeatures(f_feats_b);
auto features_a = some<CDenseFeatures<float64_t>>(f_feats_a);
auto features_b = some<CDenseFeatures<float64_t>>(f_feats_b);
We create an instance of CCosineDistance by passing it CDenseFeatures.
distance = CosineDistance(features_a, features_a)
distance = CosineDistance(features_a, features_a);
CosineDistance distance = new CosineDistance(features_a, features_a);
distance = Modshogun::CosineDistance.new features_a, features_a
distance <- CosineDistance(features_a, features_a)
distance = modshogun.CosineDistance(features_a, features_a)
CosineDistance distance = new CosineDistance(features_a, features_a);
auto distance = some<CCosineDistance>(features_a, features_a);
The distance matrix can be extracted as follows:
distance_matrix_aa = distance.get_distance_matrix()
distance_matrix_aa = distance.get_distance_matrix();
DoubleMatrix distance_matrix_aa = distance.get_distance_matrix();
distance_matrix_aa = distance.get_distance_matrix
distance_matrix_aa <- distance$get_distance_matrix()
distance_matrix_aa = distance:get_distance_matrix()
double[,] distance_matrix_aa = distance.get_distance_matrix();
auto distance_matrix_aa = distance->get_distance_matrix();
We can use the same instance with new CDenseFeatures to compute asymmetrical distance as follows:
distance.init(features_a, features_b)
distance_matrix_ab = distance.get_distance_matrix()
distance.init(features_a, features_b);
distance_matrix_ab = distance.get_distance_matrix();
distance.init(features_a, features_b);
DoubleMatrix distance_matrix_ab = distance.get_distance_matrix();
distance.init features_a, features_b
distance_matrix_ab = distance.get_distance_matrix
distance$init(features_a, features_b)
distance_matrix_ab <- distance$get_distance_matrix()
distance:init(features_a, features_b)
distance_matrix_ab = distance:get_distance_matrix()
distance.init(features_a, features_b);
double[,] distance_matrix_ab = distance.get_distance_matrix();
distance->init(features_a, features_b);
auto distance_matrix_ab = distance->get_distance_matrix();