309
edits
(→Topics) |
(→Topics) |
||
Line 67: | Line 67: | ||
|The proliferation of mobile devices especially smart phones brings remarkable opportunities for the e-commerce development. Recommendation systems have been being widely used by almost all the e-commerce platforms to help consumers find their ideal products to purchase more quickly. Modern recommendation systems have become increasingly more complex compared to their early content-based and collaborative filtering versions. In this survey, we will cover recent advances in recommendation methods, focusing on matrix factorization, multi-armed bandits, and methods for blending recommendations. We will also describe evaluation techniques, and outline open issues and challenges. The ultimate goal of this tutorial is to present a toolkit of new recommendation methods in perspective to data-related problems, and highlight opportunities and new research paths for researchers and practitioners that work on problems in the intersection of recommendation systems and databases. | |The proliferation of mobile devices especially smart phones brings remarkable opportunities for the e-commerce development. Recommendation systems have been being widely used by almost all the e-commerce platforms to help consumers find their ideal products to purchase more quickly. Modern recommendation systems have become increasingly more complex compared to their early content-based and collaborative filtering versions. In this survey, we will cover recent advances in recommendation methods, focusing on matrix factorization, multi-armed bandits, and methods for blending recommendations. We will also describe evaluation techniques, and outline open issues and challenges. The ultimate goal of this tutorial is to present a toolkit of new recommendation methods in perspective to data-related problems, and highlight opportunities and new research paths for researchers and practitioners that work on problems in the intersection of recommendation systems and databases. | ||
|Basic knowledge about recommender system and machine learning | |Basic knowledge about recommender system and machine learning | ||
[Bo Zhao--<bo.zhao@gwdg.de>] | |[Bo Zhao--<bo.zhao@gwdg.de>] | ||
| [https://dl.acm.org/citation.cfm?id=2789995][https://arxiv.org/abs/1801.02294] | | [https://dl.acm.org/citation.cfm?id=2789995][https://arxiv.org/abs/1801.02294] | ||
|- | |- |