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Robustness of a Neighbor Selection Markov Chain in Prefetching Tiled Web Data

机译:预取切片Web数据中邻居选择马尔可夫链的鲁棒性

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摘要

The service speed of tiled-web data such as a map can be improved by prefetching future tiles while the current one is being displayed. Traditional prefetching techniques examine the transition probabilities among the tiles to predict the next tile to be requested. However, when the tile space is very huge, and a large portion of it is accessed with even distribution, it is very costly to monitor all those tiles. A technique that captures the regularity in the tile request pattern by using an NSMC (Neighbor Selection Markov Chain) has been suggested. The required regularity to use the technique is that the next tile to be requested is dependent on previous k movements (or requests) in the tile space. Maps show such regularity in a sense. Electronic books show a strong such regularity. The NSMC captures that regularity and predicts the client's next movement. However, Since the real-life movements are rarely strictly regular, we need to show that NSMC is robust enough such that with random movements occurred frequently, it still captures the regularity and predicts the future movement with a very high accuracy.
机译:可以通过在显示当前图块时预取将来的图块来提高图块化Web数据(如地图)的服务速度。传统的预取技术检查图块之间的过渡概率,以预测要请求的下一个图块。但是,当图块空间非常大,并且其中很大一部分以均匀分布访问时,监视所有这些图块非常昂贵。已经提出了一种通过使用NSMC(邻居选择马尔可夫链)来捕获瓦片请求模式中的规则性的技术。使用该技术所需的规律性是要请求的下一个图块取决于图块空间中的前k个移动(或请求)。地图在某种程度上显示了这种规律性。电子书显示出很强的规律性。 NSMC会捕捉到这种规律性并预测客户的下一步行动。但是,由于现实生活中的运动很少严格有规律地进行,因此我们需要证明NSMC具有足够的鲁棒性,使得在随机运动频繁发生的情况下,NSMC仍能捕捉到规律性并非常准确地预测未来的运动。

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