
Yanfei Kang
@yanfeikang
Assoc Prof in School of Economics and Management, Beihang University. PhD from @MonashUni. Happy mama of two sons. My husband @f3ngli & our lab KLLAB.org.
ID: 2448972870
https://yanfei.site 17-04-2014 05:14:42
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163 Followers
132 Following



Our new working paper (Que será será? The uncertainty estimation of feature-based time series forecasts) with @XiaoqianWang7 Yanfei Kang & Fotios Petropoulos is now available for preview at arxiv.org/abs/1908.02891 But before you read it, let's enjoy this first youtube.com/watch?v=SdhAfM…





Our preprint "Distributed ARIMA Models for Ultra-long Time Series" (with @XiaoqianWang7 Yanfei Kang @robjhyndman) is available on arXiv arxiv.org/abs/2007.09577. Code is also implemented on Apache Spark github.com/xqnwang/darima. Feedbacks are welcome!


What an outstanding achievement! Grateful to Fotios Petropoulos

Congrats to @XiaoqianWang7 and Xixi Li from KLLAB.org for w㏌n㏌g the awards at #ISFConf2020. A very big thank you to the #ISFConf2020 organizers and the spo㎱ors. @gathana1 Tao Hong Pam Stroud Also very grateful to our collaborators! @robjhyndman and Fotios Petropoulos



#roamcult Hey guys, I developed a plug-in for Roam Research that can group Linked References of page based on pre-configured categories and corresponding Regex Rule, check this link github.com/AngelPone/roam… thanks for the help from David Vargas A small demo:

Very nice plug-in for Roam Research by my very organized postgraduate student Bohan Zhang.




Do you want to learn more about forecast combinations? Read this outstanding new review paper by Xiaoqian Wang @robjhyndman Feng Li Yanfei Kang published at the International Journal of Forecasting. doi.org/10.1016/j.ijfo…


In the new paper with Bohan Zhang, Anastasios Panagiotelis and Feng Li, we define and develop a formal discrete forecast reconciliation framework. Well done Bohan Zhang. Preprint available: arxiv.org/abs/2305.18809.

Our GRATIS paper reached its 100th citation🎉🎉🎉We could train forecasting models purely using synthetic time times. Now it seems natural for generative models, but in 2018 we had a really hard time being accepted by mainstream statistical journals😂😂😂@robjhyndman Yanfei Kang
