PageRank
本笔记本演示了根据少数节点的标签,通过 PageRank 对图节点进行分类。
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from IPython.display import SVG
[2]:
import numpy as np
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from sknetwork.data import karate_club, painters, movie_actor
from sknetwork.classification import PageRankClassifier, get_accuracy_score
from sknetwork.visualization import svg_graph, visualize_bigraph
图
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graph = karate_club(metadata=True)
adjacency = graph.adjacency
position = graph.position
labels_true = graph.labels
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labels = {i: labels_true[i] for i in [0, 33]}
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pagerank = PageRankClassifier()
labels_pred = pagerank.fit_predict(adjacency, labels)
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accuracy = get_accuracy_score(labels_true, labels_pred)
np.round(accuracy, 2)
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0.97
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image = svg_graph(adjacency, position, labels=labels_pred, seeds=labels)
SVG(image)
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# probability distribution over labels
label = 1
probs = pagerank.predict_proba()
scores = probs[:,label]
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image = svg_graph(adjacency, position, scores=scores, seeds=labels)
SVG(image)
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有向图
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graph = painters(metadata=True)
adjacency = graph.adjacency
position = graph.position
names = graph.names
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rembrandt = 5
klimt = 6
cezanne = 11
labels = {cezanne: 0, rembrandt: 1, klimt: 2}
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pagerank = PageRankClassifier()
labels_pred = pagerank.fit_predict(adjacency, labels)
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image = svg_graph(adjacency, position, names, labels=labels_pred, seeds=labels)
SVG(image)
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[15]:
# probability distribution over labels
probs = pagerank.predict_proba()
scores = probs[:,0]
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image = svg_graph(adjacency, position, names, scores=scores, seeds=[cezanne])
SVG(image)
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二部图
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graph = movie_actor(metadata=True)
biadjacency = graph.biadjacency
names_row = graph.names_row
names_col = graph.names_col
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inception = 0
drive = 3
budapest = 8
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labels_row = {inception: 0, drive: 1, budapest: 2}
[20]:
pagerank = PageRankClassifier()
pagerank.fit(biadjacency, labels_row)
labels_row_pred = pagerank.labels_row_
labels_col_pred = pagerank.labels_col_
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image = visualize_bigraph(biadjacency, names_row, names_col, labels_row_pred, labels_col_pred, seeds_row=labels_row)
SVG(image)
[21]:
[22]:
# probability distribution over labels
probs_row = pagerank.predict_proba()
probs_col = pagerank.predict_proba(columns=True)
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label = 1
scores_row = probs_row[:,label]
scores_col = probs_col[:,label]
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image = visualize_bigraph(biadjacency, names_row, names_col, scores_row=scores_row, scores_col=scores_col,
seeds_row=labels_row)
SVG(image)
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