CTR预测的现场感知分解机

Yu-Chin Juan, Yong Zhuang, Wei-Sheng Chin, Chih-Jen Lin
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引用次数: 609

摘要

点击率(CTR)预测在计算广告中起着重要的作用。基于2次多项式映射的模型和因子分解机(FMs)被广泛用于该任务。最近,FMs的一种变体,现场感知因子分解机(FFMs)在一些世界范围内的cr预测竞赛中优于现有模型。基于我们赢得其中两个的经验,本文建立了ffm作为一种有效的方法来分类大型稀疏数据,包括来自CTR预测的数据。首先,我们提出了训练ffm的有效方法。然后对ffm进行了综合分析,并与竞争模型进行了比较。实验表明ffm对某些分类问题非常有用。最后,我们发布了一个ffm包供公众使用。
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Field-aware Factorization Machines for CTR Prediction
Click-through rate (CTR) prediction plays an important role in computational advertising. Models based on degree-2 polynomial mappings and factorization machines (FMs) are widely used for this task. Recently, a variant of FMs, field-aware factorization machines (FFMs), outperforms existing models in some world-wide CTR-prediction competitions. Based on our experiences in winning two of them, in this paper we establish FFMs as an effective method for classifying large sparse data including those from CTR prediction. First, we propose efficient implementations for training FFMs. Then we comprehensively analyze FFMs and compare this approach with competing models. Experiments show that FFMs are very useful for certain classification problems. Finally, we have released a package of FFMs for public use.
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