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To reference or cite the objects present in the Software Heritage archive, permalinks based on SoftWare Hash IDentifiers (SWHIDs) must be used.
Select below a type of object currently browsed in order to display its associated SWHID and permalink.

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swh:1:cnt:d29a2ac8ebc6297d6e48980d2ddfbce1be570315

This interface enables to generate software citations, provided that the root directory of browsed objects contains a citation.cff or codemeta.json file.
Select below a type of object currently browsed in order to generate citations for them.

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Generate software citation in BibTex format (requires biblatex-software package)
Generating citation ...
"""
This script goes through the nearest neighbor preservation data generated by the
`data_generation_nearest_neighbor_preservation_per_theta_value_MNIST.py`
script and creates a plot with one precision/recall curve per theta value.
"""
###########
# IMPORTS #
###########

from pathlib import Path
import numpy as np
from matplotlib import pyplot as plt
from hyperbolicTSNE import Datasets

#################################
# GENERAL EXPERIMENT PARAMETERS #
#################################

BASE_DIR = "../results/nnp_per_theta_MNIST"

# Constants
dataset = Datasets.MNIST  # The dataset to run the experiment on

###################
# EXPERIMENT LOOP #
###################

# Save final embedding
fig, ax = plt.subplots()
ax.set_title("MNIST")
ax.set_xlabel('Precision')
ax.set_ylabel('Recall')

for theta in [x / 10 for x in range(0, 11, 1)]:  # Iterate over the different values for theta

    print(f"[nnp_per_theta] Processing {dataset}, Theta: {theta}")

    run_dir = Path(f"{BASE_DIR}/theta_{theta}/")

    precisions = np.load(run_dir.joinpath(f"precisions_theta_{theta}.npy"))
    recalls = np.load(run_dir.joinpath(f"recalls_theta_{theta}.npy"))

    ax.plot(precisions, recalls, label=f"{theta}")

ax.legend()
fig.savefig(Path(BASE_DIR).joinpath(f"{dataset}_prec-vs-rec_per_theta.png"))

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Software Heritage — Copyright (C) 2015–2026, The Software Heritage developers. License: GNU AGPLv3+.
The source code of Software Heritage itself is available on our development forge.
The source code files archived by Software Heritage are available under their own copyright and licenses.
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