I've got a Pipeline setup using a TfidfVectorizer and TruncatedSVD. I train the models with sklearn and calculate the distance between two vectors using the cosine similarity. Here's my code:
def create_scikit_corpus(leaf_names=None):
vectorizer = TfidfVectorizer(
tokenizer=Tokenizer(),
stop_words='english',
use_idf=True,
smooth_idf=True
)
svd_model = TruncatedSVD(n_components=300,
algorithm='randomized',
n_iterations=10,
random_state=42)
svd_transformer = Pipeline([('tfidf', vectorizer),
('svd', svd_model)])
svd_matrix = svd_transformer.fit_transform(leaf_names)
logging.info("Models created")
test = "This is a test search query."
query_vector = svd_transformer.transform(test)
distance_matrix = pairwise_distances(query_vector, svd_matrix, metric='cosine')
return svd_transformer, svd_matrix
The thing is that I'm not sure what to do once I have the distance_matrix variable. I guess I'm kinda confused on exactly what that is.
I'm trying to find which document matches best with my query. Thanks for a push in the right direction!