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hacpdsae2023
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fb5b606
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Parent(s):
9884e92
Create app.0.py
Browse filesSatisfied with version 0. Want to add Laplacian centrality
app.0.py
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import streamlit as st
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from datasets import load_dataset
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import networkx as nx
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import numpy as np
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dataset = load_dataset("roneneldan/TinyStories")
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st.write(dataset['train'][10]['text'])
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threshhold = st.slider('Threshhold',0.0,1.0,step=0.1)
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#-------------------------------------------------------------
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#-------------------------------------------------------------
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from sentence_transformers import SentenceTransformer, util
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model = SentenceTransformer('all-MiniLM-L6-v2')
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# Sentences from the data set
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#sentences = [item['text'] for item in dataset['train'][:10]]
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#sentences = [dataset['train'][0],dataset['train'][1],dataset['train'][2]]
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sentences = [dataset['train'][ii] for ii in range(10)]
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#Compute embedding
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embeddings = model.encode(sentences, convert_to_tensor=True)
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#Compute cosine-similarities
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cosine_scores = util.cos_sim(embeddings, embeddings)
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# creating adjacency matrix
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A = np.zeros((len(sentences),len(sentences)))
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#Output the pairs with their score
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for i in range(len(sentences)):
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for j in range(i):
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#st.write("{} \t\t {} \t\t Score: {:.4f}".format(sentences[i], sentences[j], cosine_scores[i][j]))
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A[i][j] = cosine_scores[i][j]
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A[j][i] = cosine_scores[i][j]
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#G = nx.from_numpy_array(A)
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G = nx.from_numpy_array(cosine_scores.numpy()>threshhold)
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#-------------------------------------------------------------
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#-------------------------------------------------------------
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# ego_graph.py
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# An example of how to plot a node's ego network
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# (egonet). This indirectly showcases slightly more involved
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# interoperability between streamlit-agraph and networkx.
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# An egonet can be # created from (almost) any network (graph),
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# and exemplifies the # concept of a subnetwork (subgraph):
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# A node's egonet is the (sub)network comprised of the focal node
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# and all the nodes to whom it is adjacent. The edges included
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# in the egonet are those nodes are both included in the aforementioned
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# nodes.
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# Use the following command to launch the app
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# streamlit run <path-to-script>.py
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# standard library dependencies
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from operator import itemgetter
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# external dependencies
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import networkx as nx
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from streamlit_agraph import agraph, Node, Edge, Config
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# First create a graph using the Barabasi-Albert model
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n = 2000
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m = 2
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#G = nx.generators.barabasi_albert_graph(n, m, seed=2023)
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# Then find the node with the largest degree;
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# This node's egonet will be the focus of this example.
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node_and_degree = G.degree()
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most_connected_node = sorted(G.degree, key=lambda x: x[1], reverse=True)[0]
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degree = G.degree(most_connected_node)
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# Create egonet for the focal node
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hub_ego = nx.ego_graph(G, most_connected_node[0])
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# Now create the equivalent Node and Edge lists
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nodes = [Node(title=str(sentences[i]['text']), id=i, label='node_'+str(i), size=20) for i in hub_ego.nodes]
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edges = [Edge(source=i, target=j, type="CURVE_SMOOTH") for (i,j) in G.edges
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if i in hub_ego.nodes and j in hub_ego.nodes]
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config = Config(width=500,
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height=500,
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directed=True,
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nodeHighlightBehavior=False,
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highlightColor="#F7A7A6", # or "blue"
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collapsible=False,
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node={'labelProperty':'label'},
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# **kwargs e.g. node_size=1000 or node_color="blue"
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)
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return_value = agraph(nodes=nodes,
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edges=edges,
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config=config)
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