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To determine if a data point belongs to multiple clusters, we consider the distance of data points to each cluster center.
We prove that if the energy consumed by data transmission is proportional to dα+c, where d is the distance of data transmission and α and c are some constants, then for a circular area of interest with radius R, the optimal number of annuli that maximizes the network lifetime is m="R((α−1)/c)1/α for an arbitrary sensor density function.
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Besides the distances of data examples to SVMs hyperplanes, the type-2 fuzzy SVMs fusion system also considers the accuracy information of individual SVMs.
To determine if a data point belongs to multiple clusters, consider the distance of the data point to each cluster center.
where ||z k - v i ||2 is the chosen distance measure between a data point z k and the cluster v i is an indicator of the distance of the data points from their cluster prototypes.
The relative errors of the estimated values in Table 2 are represented by the distance of each data point from the 1 1 diagonal line in Fig. 2.
On the other hand, the distance of our data spans about 10°, so beam forming or slant stacking method is not proper either (Thomas et al. 1999).
Some of the criteria that can be defined are the datacentres where replicas should reside, the number of replicas, the distance of the data to their clients, and the distance among replicas.
Depending on the distance of each data point from the existing clusters, that element will either join the nearest cluster or form the seed of a new cluster.
As the discriminant value measures the "distance" of the data point from the hyperplane that separates the two classes, traditionally points with discriminant value larger than some threshold (typically zero) are classified as positives and the rest as negatives.
However, vocal gap deviation (the orthogonal distance of data points to the lower-bound regression) was significantly smaller when singing reactively than when singing spontaneously, indicating that skylarks performed closer to the performance limit when challenged.
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Justyna Jupowicz-Kozak
CEO of Professional Science Editing for Scientists @ prosciediting.com