We study the performance of a proportional weights algorithm for online capacitated bipartite matching modeling the delivery of impression ads. The algorithm uses predictions on the advertiser nodes to match arriving impression nodes fractionally in proportion to the weights of its neighbors. This paper gives a thorough empirical study of the performance of the algorithm on a data-set of ad impressions from Yahoo! and shows its superior performance compared to natural baselines such as a greedy water-filling algorithm and the ranking algorithm. The proportional weights algorithm has recently received interest in the theoretical literature where it was shown to have strong guarantees beyond the worst-case model of algorithms augmented with predictions. We extend these results to the case where the advertisers' capacities are no longer stationary over time. Additionally, we show the algorithm has near optimal performance in the random-order arrival model when the number of impressions and the optimal matching are sufficiently large.
翻译:我们研究的是在线能力强的双边匹配模拟发送印象广告的成比例加权算法的性能。 算法使用广告节点上的预测, 以与其邻居的重量成比例的成比例地匹配到达的印象节点。 本文对亚虎的一组数据集中的算法的性能进行了彻底的经验性研究 。 并展示了它相对于贪婪的填水算法和排名算法等自然基线的优异性性能。 比例加权算法最近受到理论文献的注意, 其中显示它拥有超过最坏的、与预测相加的算法模型的有力保障。 我们将这些结果推广到广告商的能力在一段时间内不再静止的情况。 此外, 当印象和最佳匹配数量足够大时, 我们展示算法在随机到货模型中几乎具有最佳性性性性能 。