hugolpz / Cat-is-smart

Cat-is-smart is a modern & multimedia web/mobile application to learn Chinese vocabulary smartly.

Home Page:https://hugolpz.github.io/Cat-is-smart/html/

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Cat-is-smart

Cat-is-smart is a modern & multimedia web/mobile application to learn Chinese vocabulary smartly.

git clone https://github.com/hugolpz/Cat-is-smart.git
mkdir -p ./audio ./audio/cmn;
git clone https://github.com/hugolpz/audio-cmn.git ./audio/cmn

Web/Mobile Lexical App

Cat-is-smart web app [alpha] have been designed to provide a demo app implementing expertises and innovations in information design and Chinese vocabulary acquisition. Focusing on HSK 2010 words plus 10.000 other frequent items, we use well known vocabulary acquisition concepts such as lexical transfers and easing factors to provide an optimal, personalized curriculum to the learner. As researchers, we also wish to use this project to push forward A/B studies and quantitative analysis in order to get real numbers on learners' practices, and solidly identify what works best.

Features

  • Search: the basis, a searchable electronic dictionary.
  • Test: an auto-evaluation page, so we can craft a personalized curriculum.
  • Good-to-learn list : a guided exploration algorithm for best words to learn based on previous knowledges (Intelligent Teaching System)
  • Favorite list
  • Learned list
  • Information design : intuitive colors to know which words to focus on.
  • Audio !
  • Learn everywhere ! thanks to multi-OS & mobile first approaches
  • Code is under CC-by-sa-nc licenses so world citizens get full benefit of it!

License

  • Lopez Hugo, Creative Commons CC-BY-SA-NC 4.0. For profit entities and publicly subventionned groups are encouraged to contact the author to negociate terms of use in production.

About

Cat-is-smart is a modern & multimedia web/mobile application to learn Chinese vocabulary smartly.

https://hugolpz.github.io/Cat-is-smart/html/


Languages

Language:JavaScript 63.4%Language:HTML 32.4%Language:CSS 4.2%