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Generative Probabilistic Models for Analysis of Communication Event Data with Applications to Email Behavior.

机译:生成概率模型,用于分析通信事件数据并应用于电子邮件行为。

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摘要

Our daily lives increasingly involve interactions with others via different communication channels, such as email, text messaging, and social media. In this context, the ability to analyze and understand our communication patterns is becoming increasingly important. This dissertation focuses on generative probabilistic models for describing different characteristics of communication behavior, focusing primarily on email communication.;First, we present a two-parameter kernel density estimator for estimating the probability density over recipients of an email (or, more generally, items which appear in an itemset). A stochastic gradient method is proposed for efficiently inferring the kernel parameters given a continuous stream of data. Next, we apply the kernel model and the Bernoulli mixture model to two important prediction tasks: given a partially completed email recipient list, 1) predict which others will be included in the email, and 2) rank potential recipients based on their likelihood to be added to the email. Such predictions are useful in suggesting future actions to the user (i.e. which person to add to an email) based on their previous actions. We then investigate a piecewise-constant Poisson process model for describing the time-varying communication rate between an individual and several groups of their contacts, where changes in the Poisson rate are modeled as latent state changes within a hidden Markov model.;We next focus on the time it takes for an individual to respond to an event, such as receiving an email. We show that this response time depends heavily on the individual's typical daily and weekly patterns - patterns not adequately captured in standard models of response time (e.g. the Gamma distribution or Hawkes processes). A time-warping mechanism is introduced where the absolute response time is modeled as a transformation of effective response time, relative to the daily and weekly patterns of the individual. The usefulness of applying the time-warping mechanism to standard models of response time, both in terms of log-likelihood and accuracy in predicting which events will be quickly responded to, is illustrated over several individual email histories.
机译:我们的日常生活越来越多地涉及通过不同的沟通渠道(例如电子邮件,短信和社交媒体)与他人进行互动。在这种情况下,分析和理解我们的沟通模式的能力变得越来越重要。本文主要研究用于描述通信行为不同特征的生成概率模型,主要侧重于电子邮件通信。首先,我们提出了一个两参数核密度估计器,用于估计电子邮件(或更一般而言,项目)收件人的概率密度。出现在项目集中)。提出了一种随机梯度方法,可在给定连续数据流的情况下有效地推断内核参数。接下来,我们将内核模型和伯努利混合模型应用于两个重要的预测任务:给定部分完成的电子邮件收件人列表,1)预测哪些其他电子邮件收件人将包括在电子邮件中,以及2)根据潜在收件人的可能性对他们进行排名已添加到电子邮件中。这样的预测在基于用户的先前动作向用户建议将来的动作(即,将哪个人添加到电子邮件中)方面是有用的。然后,我们研究分段常数Poisson过程模型,该模型描述了一个人与几组联系人之间的时变通信速率,其中,泊松速率的变化被建模为隐马尔可夫模型内的潜在状态变化。个人响应事件(例如接收电子邮件)所花费的时间。我们表明,此响应时间在很大程度上取决于个人的典型每日和每周模式-在响应时间的标准模型(例如Gamma分布或Hawkes过程)中无法充分捕捉到的模式。引入了时间扭曲机制,其中将绝对响应时间建模为有效响应时间相对于个人每日和每周模式的转换。在几个单独的电子邮件历史记录中,说明了将时间扭曲机制应用于响应时间的标准模型的有用性,无论是对数似然性还是预测哪些事件将被快速响应的准确性。

著录项

  • 作者

    Navaroli, Nicholas Martin.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Computer science.;Statistics.;Artificial intelligence.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 249 p.
  • 总页数 249
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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