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plt_dist_hm.py
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plt_dist_hm.py
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import pandas as pd
import numpy as np
import preproc as pre
import detrend as dd
import networkx as nx
import build_corr_nx as bnx
import matplotlib.pyplot as plt
import seaborn as sns
import time_series_nx as tsx
def dist_hm():
df = dd.detrend()
df.dropna(inplace=True)
# builds closing price correlation network
H = tsx.ts_corr_network(data=df, corr_param='dcor', prune=0.35)
#H = bnx.build_nx()
# grabs node labels from H (H.nodes attribute has dtype GraphObject) and appends to a list
# we'll need to access this list to build the ditance dataframe
node_list = []
for nodes in H.nodes:
node_list.append(nodes)
# calculates the distance matrix of H with the Floyd-Warshall algorithm
dist_matrix = nx.floyd_warshall_numpy(H, weight="weight")
# initializes the distance dataframe with the first column of the distance matrix
dist_df = pd.DataFrame(np.transpose(dist_matrix[0]), columns=[node_list[0]])
# creates a new column in the distance dataframe for each stock ticker and preprocesses it for heatmap plotting
for i in range(len(H.nodes)):
dist_df[node_list[i]] = pd.DataFrame(np.transpose(dist_matrix[i]))
dist_df.insert(loc=0, value=pd.DataFrame(node_list), column="Node")
dist_df.set_index("Node", inplace=True, drop=True)
# builds colorbar
cmap = sns.cubehelix_palette(3, as_cmap=True, reverse=True)
# plots an annotated heatmap (with the seaborn module) of the distance dataframe with the upper triangle masked
# the distance dataframe is symetric and thus the upper triganle is redundent data ink
mask = np.zeros_like(dist_df)
mask[np.triu_indices_from(mask)] = True
with sns.axes_style("white"):
ax = sns.heatmap(
dist_df,
xticklabels=dist_df.columns,
yticklabels=dist_df.columns,
cmap=cmap,
annot=True,
cbar=False,
mask=mask,
)
plt.show()
if __name__ == "__main__":
dist_hm()