Skip to main content

Spreading Processes on Networks

Project description

Spreading Processes on Networks (SPoNet)

build

This package provides an efficient implementation of popular discrete-state spreading processes on networks of interacting agents. They can be used to simulate how opinions about certain issues develop over time within a population, or how an infectious disease spreads. The simulation loop is just-in-time compiled using numba, which makes performance comparable with compiled languages like C++.

Available models:

  • continuous-time noisy voter model (CNVM)
  • continuous-time noisy threshold model (CNTM)

Installation

The package requires Python 3.9, 3.10, 3.11, or 3.12. Install from the PyPI repository:

pip install sponet

or get the latest version directly from GitHub:

pip install git+https://github.com/lueckem/SPoNet

About the CNVM

Let a network (undirected simple graph) of $N$ nodes be given. The nodes represent agents and the edges social interactions. Each node is endowed with one of $M$ discrete opinions. Thus, the system state is given by a vector $x \in {1,\dots,M}^N$, where $x_i$ describes the opinion of node $i$. Each node's opinion $x_i \in {1,\dots,M}$ changes over time according to a continuous-time Markov chain (Markov jump process). Given the current system state $x$, the generator matrix $Q^i$ of the continuous-time Markov chain associated with node $i$ is defined as

$$ Q^i \in \mathbb{R}^{M \times M},\quad (Q^i)_ {m,n} := r_{m,n} \frac{d_ {i,n}(x)}{(d_i)^\alpha} + \tilde{r}_ {m,n},\ m\neq n, $$

where $d_{i,n}(x)$ denotes the number of neighbors of node $i$ with opinion $n$ and $d_i$ is the degree of node $i$. The matrices $r, \tilde{r} \in \mathbb{R}^{M \times M}$ and $\alpha \in \mathbb{R}$ are model parameters.

Thus, the transition rates $(Q^i)_ {m,n}$ consist of two components. The first component $r_{m,n} d_{i,n}(x)/ (d_i)^\alpha$ describes at which rate node $i$ gets "infected" with opinion $n$ by nodes in its neighborhood. The second part $\tilde{r}_{m,n}$ describes transitions that are independent from the neighborhood (e.g., noise).

The parameter $\alpha$ can be used to tune the type of interaction. For $\alpha=1$ the transition rates are normalized because $d_{i,n}(x)/d_i \in [0,1]$. The setting $\alpha=0$ however yields a linear increase of the transition rates with the number of "infected" neighbors, and is often used in epidemic modeling, e.g., the contact process or SIS model.

The network itself is static, i.e., the nodes and edges do not change over time.

Basic Usage

First define the model parameters:

from sponet import CNVMParameters
import numpy as np
import networkx as nx

num_nodes = 100
r = np.array([[0, .8], [.2, 0]])
r_tilde = np.array([[0, .1], [.2, 0]])
network = nx.erdos_renyi_graph(n=num_nodes, p=0.1)

params = CNVMParameters(
    num_opinions=2,
    network=network,
    r=r,
    r_tilde=r_tilde,
    alpha=1,
)

Then simulate the model, starting in state x_init:

from sponet import CNVM

x_init = np.random.randint(0, 2, num_nodes)
model = CNVM(params)
t, x = model.simulate(t_max=50, x_init=x_init)

The output t contains the time points of state jumps and x the system states after each jump.

A more detailed overview of the package can be found in the jupyter notebook examples/tutorial_cnvm.ipynb. Moreover, the behavior of the CNVM in the mean-field limit is discussed in examples/mean_field.ipynb. In the notebook examples/SIS-model.ipynb the existence of an epidemic threshold for the SIS model in epidemiology is demonstrated.

Implementation details

After a node switches its opinion, the system state $x$ changes and hence all the generator matrices $Q^i$ may change as well. We apply a Gillespie-like algorithm to generate statistically correct samples of the process. We start a Poisson clock for each possible transition and as soon as the first transition occurs we modify the generator matrices and reset all the clocks. To do this efficiently, it is advantageous to transform the rate matrices $r$ and $\tilde{r}$ into an equivalent format consisting of base rates $r_0, \tilde{r}_0 > 0$ and probability matrices $p, \tilde{p} \in [0, 1]^{M\times M}$ such that

$$ r_{m,n} = r_0 p_ {m,n}, \quad \tilde{r}_ {m,n} = \tilde{r}_ 0 \tilde{p}_ {m,n} / M. $$

Furthermore, we define the cumulative rates

$$ \lambda := \sum_{i=1}^N r_0 d_i^{(1-\alpha)},\quad \tilde{\lambda} := N \tilde{r}_0,\quad \hat{\lambda} := \lambda + \tilde{\lambda}. $$

Then the simulation loop is given by

  1. Draw time of next jump event from exponential distribution $\exp(\hat{\lambda})$. Go to 2.
  2. With probability $\lambda / \hat{\lambda}$ the event is due to infection, in which case go to 3. Else it is due to noise, go to 4.
  3. Draw agent $i$ from ${1,\dots,N}$ according to distribution $\mathbb{P}(i = j) = r_0 d_j^{(1-\alpha)} / \lambda$. Let $m$ denote the state of agent $i$. Draw $n$ from ${1,\dots,M}$ according to $\mathbb{P}(n = k) = d_{i,k}(x) / d_i$. With probability $p_{m,n}$ agent $i$ switches to state $n$. Go back to 1.
  4. Draw $i$ from ${1,\dots,N}$ and $n$ from ${1,\dots,M}$ uniformly. Let $m$ denote the state of agent $i$. With probability $\tilde{p}_{m,n}$ agent $i$ switches to state $n$. Go back to 1.

About the CNTM

On a network (undirected simple graph) of $N$ nodes, each node $i$ has one of two opinions $x_i \in {0, 1}$. At the rate $r \geq 0$, each node evaluates to change their opinion from its current opinion $m\in {0, 1}$ to the other opinion $n=1-m$. It changes the opinion if the percentage of neighbors of opinion n exceeds the threshold $b_{m,n}$. Additionally, each node changes its state randomly at rate $\tilde{r} \geq 0$ (noise). Hence, the rate at which node $i$ switches from opinion $m$ to opinion $n$ is

$$ r \ \delta_{\left( \frac{d_{i,n}(x)}{d_{i}} \geq b_{m,n} \right)} + \tilde{r} $$

where $d_{i,n}(x)$ denotes the number of neighbors of node $i$ with opinion $n$ and $d_i$ is the degree of node $i$. Thus, in contrast to the CNVM, the CNTM assumes that a switch to a different opinion only occurs if that opinion is already sufficiently established in the neighborhood.

Basic Usage

First define the model parameters:

from sponet import CNTMParameters
import numpy as np
import networkx as nx

num_nodes = 100
r = 1
r_tilde = 0.1
threshold_01 = 0.5
threshold_10 = 0.3
network = nx.erdos_renyi_graph(n=num_nodes, p=0.1)

params = CNTMParameters(
    network=network,
    r=r,
    r_tilde=r_tilde,
    threshold_01=threshold_01,
    threshold_10=threshold_10,
)

Then simulate the model, starting in state x_init:

from sponet import CNTM

x_init = np.random.randint(0, 2, num_nodes)
model = CNTM(params)
t, x = model.simulate(t_max=50, x_init=x_init)

The output t contains the time points of state jumps and x the system states after each jump.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sponet-2.4.0.tar.gz (35.6 kB view details)

Uploaded Source

Built Distribution

sponet-2.4.0-py3-none-any.whl (40.6 kB view details)

Uploaded Python 3

File details

Details for the file sponet-2.4.0.tar.gz.

File metadata

  • Download URL: sponet-2.4.0.tar.gz
  • Upload date:
  • Size: 35.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.3 CPython/3.11.7 Linux/6.5.0-1025-azure

File hashes

Hashes for sponet-2.4.0.tar.gz
Algorithm Hash digest
SHA256 bf67e41935eaea3b221bb4a47fa3245c294d4deda38bbdbafdccff4ca52272fc
MD5 7157cdcc085239558e481fd52e2d2d7e
BLAKE2b-256 bfc6b2ecae5ae23589c6cf261e84e1edfef5378d109e571685e8f7382b1cbd89

See more details on using hashes here.

File details

Details for the file sponet-2.4.0-py3-none-any.whl.

File metadata

  • Download URL: sponet-2.4.0-py3-none-any.whl
  • Upload date:
  • Size: 40.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: poetry/1.8.3 CPython/3.11.7 Linux/6.5.0-1025-azure

File hashes

Hashes for sponet-2.4.0-py3-none-any.whl
Algorithm Hash digest
SHA256 216373c7b1e419a473c29a3b5e2311b9427e504389a00e27c39553aeb906a484
MD5 937b56df64566634f26366dd0228843d
BLAKE2b-256 a13900930ee23d34b1ab945d91012a67cf07a70b5d13920ecdafd8ffcf1bc3a6

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page