News recommendation is often modeled as a sequential recommendation task, which assumes that there are rich short-term dependencies over historical clicked news. However, in news recommendation scenarios users usually have strong preferences on the temporal diversity of news information and may not tend to click similar news successively, which is very different from many sequential recommendation scenarios such as e-commerce recommendation. In this paper, we study whether news recommendation can be regarded as a standard sequential recommendation problem. Through extensive experiments on two real-world datasets, we find that modeling news recommendation as a sequential recommendation problem is suboptimal. To handle this challenge, we further propose a temporal diversity-aware news recommendation method that can promote candidate news that are diverse from recently clicked news, which can help predict future clicks more accurately. Experiments show that our approach can consistently improve various news recommendation methods.
翻译:新闻建议往往以顺序建议任务为模式,它假定历史点击新闻有丰富的短期依赖性。然而,在新闻建议设想中,用户通常对新闻信息的时间多样性有强烈的偏好,而且可能不会连续点击类似新闻,这与电子商务建议等许多顺序建议设想非常不同。在本文中,我们研究是否可以将新闻建议视为标准的顺序建议问题。通过对两个现实世界数据集的广泛实验,我们发现将新闻建议建模为一个顺序建议问题是不理想的。为了应对这一挑战,我们进一步提议一个时间多样性新闻建议方法,可以宣传与最近点击新闻不同的候选新闻,这有助于更准确地预测未来点击。实验表明,我们的方法可以不断改进各种新闻建议方法。