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The power of choice in growing trees

机译:选择生长树木的力量

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摘要

The “power of choice” has been shown to radically alter the behavior of a number of randomized algorithms. Here we explore the effects of choice on models of random tree growth. In our models each new node has k randomly chosen contacts, where k > 1 is a constant. It then attaches to whichever one of these contacts is most desirable in some sense, such as its distance from the root or its degree. Even when the new node has just two choices, i.e., when k = 2, the resulting tree can be very different from a random graph or tree. For instance, if the new node attaches to the contact which is closest to the root of the tree, the distribution of depths changes from Poisson to a traveling wave solution. If the new node attaches to the contact with the smallest degree, the degree distribution is closer to uniform than in a random graph, so that with high probability there are no nodes in the tree with degree greater than O(log logN). Finally, if the new node attaches to the contact with the largest degree, we find that the degree distribution is a power law with exponent 1 up to degrees roughly equal to k, with an exponential cutoff beyond that; thus, in this case, we need k 1 to see a power law over a wide range of degrees.
机译:事实证明,“选择权”从根本上改变了许多随机算法的行为。在这里,我们探索选择对随机树生长模型的影响。在我们的模型中,每个新节点都有k个随机选择的触点,其中k> 1是一个常数。然后从某种意义上说,它附着在这些触点中最需要的一个触点上,例如它与根的距离或角度。即使当新节点只有两个选择时,即当k = 2时,结果树也可能与随机图或树有很大不同。例如,如果新节点连接到最接近树根的接触,则深度分布将从泊松变为行波解。如果新节点以最小的度数连接到接触点,则度数分布比随机图中的度分布更接近均匀,因此树中不存在度数大于O(log logN)的节点。最后,如果新节点以最大度数依附于接触,我们发现度数分布是幂律,指数为1,度数大致等于k,其指数截止值大于k。因此,在这种情况下,我们需要k 1才能在很宽的范围内看到幂律。

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