Fused Matrix Factorization & some personal thoughts

Posted Fassy

tags:

篇首语:本文由小常识网(cha138.com)小编为大家整理,主要介绍了Fused Matrix Factorization & some personal thoughts相关的知识,希望对你有一定的参考价值。

I read this paper, the purpose are common to some extent...but the way this paper has adapted and the way we discussed yesterday still have many differences.

First, when we talked about about friends , we are referring to friends that we deriviated from users‘ checkin data, while the paper refers to social friends. This is a huge difference. And I think there is something to do here. But I recalled one paper I read which has already looked in to location friends (Point-of-Interest Recommendations: Learning Potemtial Check-ins From Friends). This paper looked deeply into three kinds of friends, social friends, location friends(the friends we refer to) and neighbor friends and their influence on user‘s checkin decisions. 

As for another topic we are concerned, there are stil some differences here. The writer used multi center model to calculate the possibilities while we plan to preprocessing the checkin data. It is more like a joint model. But I am not sure whether there are already some research into this.

And both of the papers I mentioned above does not seem to include the possible biases in similarity metrics. 

以上是关于Fused Matrix Factorization & some personal thoughts的主要内容,如果未能解决你的问题,请参考以下文章

使用 Fused 提供程序更新位置的间隔

Android Fused Location 提供商迷路了

Fused Location Provider 是不错的选择吗?

为 Fused location API 添加 addGpsStatusListener

Fused Location Provider 无故停止

从 Fused Location Provider 获取 GPS 或网络提供商