add: model approximation visualization

Approximation uses simple linear regression to determine whether
the _location information_ is significant enough (through the
calculated steepness `beta`) which can be used to determine in a
faster and more efficient way whether the calculation of the
model is necessary and helpful in the first place.
This commit is contained in:
2026-03-31 22:23:38 +02:00
parent 72c9790165
commit 3414b6c145

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model_approximation.py Normal file
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import math
import matplotlib.pyplot as plt
import numpy as np
from graph_tool.all import *
from src import centrality
from src import plot
from src import fitting
def leverage(g, weight):
# VertexPropertyMap
vp = g.new_vertex_property("double")
for v in g.vertices():
li = 0.0
neighbours = g.get_all_neighbours(v)
ki = len(neighbours)
# sum
for nv in neighbours:
other_neighbours = g.get_all_neighbours(nv)
kj = len(other_neighbours)
li += (ki - kj) / (ki + kj)
li /= ki
vp[v] = li
return vp
def random_graph(n=5000, seed=None):
"""
Uniformly random point cloud generation.
`n` [int] Number of points to generate. Default 5000 seems like a good starting point in point density and corresponding runtime for the subsequent calculations.
@return [numpy.ndarray] Array of shape(n, 2) containing the coordinates for each point of the generated point cloud.
"""
if seed is None:
import secrets
seed = secrets.randbits(128)
rng = np.random.default_rng(seed=seed)
return rng.random((n, 2)), seed
def spatial_graph(adata):
g, pos = graph_tool.generation.triangulation(adata, type="delaunay")
g.vp["pos"] = pos
weight = g.new_edge_property("double")
for e in g.edges():
weight[e] = math.sqrt(sum(map(abs, pos[e.source()].a - pos[e.target()].a)))**2
return g, weight
points, seed = random_graph()
g, weight = spatial_graph(points)
g = GraphView(g)
# calculate centrality values
vp, ep = betweenness(g, weight=weight)
vp.a = np.nan_to_num(vp.a) # correct floating point values
ep.a = np.nan_to_num(ep.a) # correct floating point values
# normalization
min_val, max_val = vp.a.min(), vp.a.max()
vp.a = (vp.a - min_val) / (max_val - min_val)
# calculate convex hull
convex_hull = centrality.convex_hull(g)
# plot graph with convex_hull
fig = plt.figure(figsize=(15, 5))
ax0, ax1 = fig.subplots(1, 2)
plot.graph_plot(fig, ax0, g, vp, convex_hull, f"Random Graph (seed: {seed})")
# generate model based on convex hull and associated centrality values
quantification = plot.quantification_data(g, vp, convex_hull)
# optimize model's piece-wise linear function
d = quantification[:, 0]
C = quantification[:, 1]
m_opt, c0_opt, b_opt, aic_opt = fitting.fit_piece_wise_linear(d, C)
# TODO
# should this be part of the plotting function itself, it should not be necessary for me to do this
d_curve = np.linspace(min(d), max(d), 500)
C_curve = np.piecewise(
d_curve,
[d_curve <= b_opt, d_curve > b_opt],
[lambda x: m_opt * x + c0_opt, lambda x: m_opt * b_opt + c0_opt]
)
# plot model containing modeled piece-wise linear function
plot.quantification_plot(ax1, quantification, d_curve, C_curve, 'Betweenness', aic_opt)
# linear regression model
m_reg, c0_reg, aic_reg = fitting.fit_linear_regression(d, C)
# TODO
# should this be part of the plotting function itself, it should not be necessary for me to do this
d_curve = np.linspace(min(d), max(d), 500)
C_curve = np.piecewise(
d_curve,
[d_curve >= 0],
[lambda x: m_reg * x + c0_reg]
)
ax1.plot(d_curve, C_curve, color='k', linewidth=1, label=f"Simple Linear Regression | AIC: {aic_reg}")
ax1.legend()
fig.savefig(f"model_approximation_betweenness_5000.svg", format='svg')