− | The modeling framework presented in the previous sections is mostly based on the Poisson approximation<ref Name=Tijms2003></ref> for both the transmission and recovery processes. The Poisson approximation assumes that the probabilities per unit time of transmitting the disease through a given edge, or recovering for a given infected node, are constant,<math> </math> and equal to <math>\beta</math> and <math>\mu</math>, respectively. Equivalently, the total time <math>\tau_i</math> that a given node <math>i</math> remains infected is a random variable with an exponential distribution <math>P_i(\tau_i)=\mu e^{-\tau_i \mu}</math>, and that the time <math>\tau_a</math> for an infection to propagate from an infected to a susceptible node along a given edge (the interevent time) is also exponentially distributed <math>P_a(\tau_a)=\mu e^{-\tau_a \mu}</math>. | + | The modeling framework presented in the previous sections is mostly based on the Poisson approximation<ref Name=Tijms2003></ref> for both the transmission and recovery processes. The Poisson approximation assumes that the probabilities per unit time of transmitting the disease through a given edge, or recovering for a given infected node, are constant,<math> </math> and equal to <math>\beta</math> and <math>\mu</math>, respectively. Equivalently, the total time <math>\tau_i</math> that a given node <math>i</math> remains infected is a random variable with an exponential distribution <math>P_i(\tau_i)=\mu e^{-\tau_i \mu}</math>, and that the time <math>\tau_a</math> for an infection to propagate from an infected node to a susceptible node along a given edge (the interevent time) is also exponentially distributed <math>P_a(\tau_a)=\mu e^{-\tau_a \mu}</math>. |
− | 前面的章节中提出的建模框架,包括传播和恢复过程,大多是基于泊松近似<ref Name=Tijms2003></ref>。这种泊松近似假设了单位时间内通过给定连边传播疾病的概率或针对给定感染节点恢复的概率,是常数,分别等于<math>\beta</math>和<math>\mu</math>。对应等效地,网络中处于I态的节点<math>i</math>仍然为感染态的总时间<math>\tau_i</math>是服从指数分布<math>P_i(\tau_i)=\mu e^{-\tau_i \mu}</math>的随机变量,并且一个感染态节点沿着一条边传播疾病给一个易感染节点的所需要花费的时间<math>\tau_a</math>,即事件发生间隔(the interevent time)也是服从指数分布<math>P_a(\tau_a)=\mu e^{-\tau_a \mu}</math>的随机变量。 | + | 前面的章节中提出的建模框架,包括传播和恢复过程,大多是基于泊松近似<ref Name=Tijms2003></ref>。这种泊松近似假设单位时间内通过给定连边传播疾病的概率或给定感染节点的恢复概率,是常数,分别等于<math>\beta</math>和<math>\mu</math>。对应等效地,网络中处于I态的节点<math>i</math>仍然为感染态的总时间<math>\tau_i</math>是服从指数分布<math>P_i(\tau_i)=\mu e^{-\tau_i \mu}</math>的随机变量,并且一个感染态节点沿着一条边传播疾病给一个易感染节点的所需要花费的时间(事件发生间隔)<math>\tau_a</math>也是服从指数分布<math>P_a(\tau_a)=\mu e^{-\tau_a \mu}</math>。 |