首页> 外文会议>IEEE International Conference on Computer and Communications >Design and implementation of an intelligent biology vocabulary learning cloud system for college students
【24h】

Design and implementation of an intelligent biology vocabulary learning cloud system for college students

机译:大学生智能生物学词汇学习云系统的设计与实现

获取原文
获取外文期刊封面目录资料

摘要

Specialized vocabulary presents a big challenge for college students especially when learning professional science curriculums such as biology, chemistry, etc. The traditional rote memorization, which is used by 89% students in China, has its limitation on efficiency and sustainability. This paper shows a new cloud-based cross-platform vocabulary learning system to give a more efficient and intelligent solution for vocabulary learning. The system can be used to search words, learn vocabulary and make a self-test. The search module contains a multifunctional dictionary, which supports speech recognition, can provide a precise, textbook and bilingual interpretation of a biology word. To learn vocabulary, users can add words to an exclusive word book and revise them anytime they want. The self-test function allows users to check their proficiency. Once a mistake appears, the word will be classified as errors and then added to a unique collection. The range of the test can be customized by users among the word book, error collection, the whole dictionary, or randomly mixed. The system greatly facilitates students' learning process and is expected to improve the learning outcome. Also, the compatibility in different systems enables students to learn vocabulary at any time through a smart phone or a computer.
机译:专业词汇对大学生来说,特别是在学习专业的科学课程(如生物学,化学等)时对大学学生进行了大量挑战。传统的CORECORIZED,在中国的89名学生使用的传统死记硬背记忆中,对效率和可持续性有所限制。本文显示了一种新的基于云的跨平台词汇学习系统,为词汇学习提供更有效和智能的解决方案。该系统可用于搜索单词,学习词汇并进行自检。搜索模块包含一个多功能字典,支持语音识别,可以提供精确,教科书和生物词的双语解释。要学习词汇,用户可以向独家Word书添加单词并随时修改它们。自检功能允许用户检查他们的熟练程度。出现错误后,单词将被分类为错误,然后添加到唯一的集合中。测试范围可以通过字册,错误集合,整个字典或随机混合中的用户自定义。该系统大大促进了学生的学习过程,预计将改善学习结果。此外,不同系统的兼容性使学生能够通过智能手机或计算机随时学习词汇。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

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