首页> 外国专利> Scoring recommendations and explanations with a probabilistic user model

Scoring recommendations and explanations with a probabilistic user model

机译:用概率用户模型对建议和解释进行评分

摘要

A data processing system generates recommendations for on-line shopping by scoring recommendations matching the customer's cart contents using by assessing and ranking each candidate recommendation by the expected incremental margin associated with the recommendation being issued (as compared to the expected margin associated with the recommendation not being issued) by taking into consideration historical associations, knowledge of the layout of the site, the complexity of the product being sold, the user's session behavior, the quality of the selling point messages, product life cycle, substitutability, demographics and/or other considerations relating to the customer purchase environment. In an illustrative implementation, scoring inputs for each candidate recommendation (such as relevance, exposure, clarity and/or pitch strength) are included in a probabilistic framework (such as a Bayesian network) to score the effectiveness of the candidate recommendation and/or associated selling point messages by comparing a recommendation outcome (e.g., purchase likelihood or expected margin resulting from a given recommendation) against a non-recommendation outcome (e.g., the purchase likelihood or expected margin if no recommendation is issued). In addition, a probabilistic framework may also be used to select a selling point message for inclusion with a selected candidate recommendation by assessing the relative strength of the selling point messages by factoring in a user profile match factor (e.g., the relative likelihood that the customer matches the various user case profiles).
机译:数据处理系统通过使用与发布的推荐相关联的预期增量利润(与未与推荐相关的预期利润相比)对每个候选推荐进行评估和排名,为与顾客的购物车内容匹配的推荐评分,从而生成在线购物的推荐通过考虑历史关联,站点布局的知识,所出售产品的复杂性,用户的会话行为,卖点消息的质量,产品生命周期,可替代性,人口统计和/或其他因素来考虑)有关客户购买环境的注意事项。在示例性实施方式中,将每个候选推荐的得分输入(例如相关性,曝光度,清晰度和/或音调强度)包括在概率框架(例如贝叶斯网络)中,以对候选推荐和/或相关联的推荐的有效性进行得分通过将推荐结果(例如,从给定推荐中得出的购买可能性或预期利润)与非推荐结果(例如,如果未发布建议时的购买可能性或期望利润)进行比较来得出卖点消息。另外,概率框架还可用于通过考虑用户简档匹配因子(例如,顾客的相对可能性)来评估卖点消息的相对强度,从而选择要包括在所选候选推荐中的卖点消息。匹配各种用户案例档案)。

著录项

  • 公开/公告号US8799096B1

    专利类型

  • 公开/公告日2014-08-05

    原文格式PDF

  • 申请/专利权人 THOMAS H. DILLON;

    申请/专利号US201113176448

  • 发明设计人 THOMAS H. DILLON;

    申请日2011-07-05

  • 分类号G06Q30;

  • 国家 US

  • 入库时间 2022-08-21 16:00:42

相似文献

  • 专利
  • 外文文献
  • 中文文献
获取专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号