• Are Recommender Systems Good for Libraries?

    推荐系统适用于图书馆吗?

    youdao

  • Recommender systems which arising in this environment alleviate information overload facing individuals.

    推荐系统的应运而生,减轻了信息过量人们的威胁。

    youdao

  • Recommender systems may be used to analyze the preference of customer, recommend product to targeted customer.

    电子商务网可以使用推荐系统分析客户消费偏好每个客户具有针对性推荐商品

    youdao

  • Perhaps the biggest issue facing recommender systems is that they need a lot of data to effectively make recommendations.

    或许推荐系统面临最大问题需要大量数据,以便形成有效推荐

    youdao

  • The system can adapt the changes of user interests quickly, and is more exact than the existing recommender systems.

    最后给出实验表明系统能够准确表达用户兴趣,特别时在用户兴趣发生变化时以往系统具有更高的准确性。

    youdao

  • Please see also my earlier post, "Attacking recommender systems", that discusses another paper by some of the same authors.

    可以看看更早篇博文:《攻击推荐系统》,讨论了来自几个作者的一篇文章

    youdao

  • Some recommender systems require the user to manually enter a personal profile of interests, preferences, or expertise.

    一些推荐系统需要用户手动输入一个包括个人爱好、兴趣专长个人信息文件。

    youdao

  • Recommender systems might be evaluated against various aspects of a recommender system, namely, functional and non-functional.

    推荐系统评估可以考虑各种不同方面亦即功能性的和非功能性的。

    youdao

  • Personalized Recommender Systems emerge under the background of this, which becomes the research focus in the domestic and overseas.

    个性化推荐系统这样背景应运而生

    youdao

  • This gives secondary effects like very fast graph algos, recommender systems and OLAP-style analytics that are currently not possible with normal RDBMS setups.

    此外,Neo4j还提供了非常图形算法、推荐系统OLAP风格分析,而一切在目前的RDBMS系统中都是无法实现的。

    youdao

  • While recommender systems are often designed to provide anonymous recommendations, referral Web is based on providing referrals via chains of named Individuals.

    推荐系统更多用来提供匿名推荐提名通过知名的个人所构建的联系来产生提名。

    youdao

  • The evaluation in the recommender systems domain might be done utilizing several principal approaches, namely, off-line experiment, user studies and online experiments.

    推荐系统可以使用几种主要评测方法包括离线实验用户调研在线实验

    youdao

  • Collaborative filtering is the most widely used and successful technology for personalized recommender systems. However it faces challenges of scalability and recommendation accuracy.

    协同过滤个性化推荐系统中应用广泛成功的推荐技术但是也面临着推荐准确度和可扩展性两大挑战

    youdao

  • Collaborative filtering recommendation algorithm can make choices based on the opinions of other people. It is the most successful technology for building recommender systems to date.

    协同过滤目前最成功一种推荐算法能够基于其他用户的观点帮助人们作出选择

    youdao

  • Collaborative filtering recommendation algorithm can make choices based on the opinions of other people. It is the most successful technology for building recommender systems to date.

    协同过滤目前最成功一种推荐算法能够基于其他用户的观点帮助人们作出选择

    youdao

$firstVoiceSent
- 来自原声例句
小调查
请问您想要如何调整此模块?

感谢您的反馈,我们会尽快进行适当修改!
进来说说原因吧 确定
小调查
请问您想要如何调整此模块?

感谢您的反馈,我们会尽快进行适当修改!
进来说说原因吧 确定