Standards Research Data
There are 3 data files in total for this data set, 1 for Experiment 1 and 2 for Experiment 2. The File Experiment 1.csv contains 12 matrices for Experiment 1, which are the opinions of the decision makers with the pairwise comparison of alternatives in the form of the linguistic preference relations. The File Experiment 2-1.csv contains 51 matrices, which denote the opinions of the decision makers with the pairwise comparison of alternatives in the form of the Linguistic Discrete Region.
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All primes can be indexed by $k$, as primes must be in the form of
$6k+1$ or $6k-1$. In this paper, we explore for what $k$ such that
either $6k+1$ or $6k-1$ is not a prime. The results can sieve primes
and especially twin primes.
$k \in S_{l} \Rightarrow 6k-1 \not \in \mathbb{P}$, $k \in S_{r}
\Rightarrow 6k+1 \not \in \mathbb{P},$ where $S_{l} = [-I]_{6I+1} =
[I]_{6I-1} \backslash \min([I]_{6I-1}), I \in \mathbb{N},$ and
$S_{r} = [-I]_{6I-1} \cup [I]_{6I+1} \backslash \min([I]_{6I+1}), I
\in \mathbb{N}.$ That is,
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Lists of file hashes used in SDAC: A Slow-Aging Solution for Android Malware Detection Using Semantic Distance Based API Clustering
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We have labeled 683 images and 2015 bounding boxes in total for now. We used 80% of the dataset which are 546 images for training and the rest of 20% which are 137 images for evaluation, and all images in the dataset have the same resolution at 1920*1080. Table.I summaries the statistics of the dataset, the category of floating leaves region has the most bounding box labels and the category of floating weeds region has the largest average size of bounding boxes.
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This is the LVSiM simulator files
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This in an artificial imbalanced data set.
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This is the second part of the supplementary data used in the paper "A Many-objective Evolutionary Algorithm With Pareto-adaptive Reference Points".
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This is the first part of the supplementary data used in the paper "A Many-objective Evolutionary Algorithm With Pareto-adaptive Reference Points".
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