Exact(2)
In an Incremental Support Vector Machine classification, the data objects labelled as non-support vectors by the previous classification are re-used as training data in the next classification along with new data samples verified by Karush Kuhn Tucker (KKT) condition.
The high end of the lowest classification should overlap with the low end of the next classification.
Similar(58)
The best classification was 2.64 times more probable than the next best classification scheme separating individuals into the same clusters and 104.27 times more probable than the classification estimating the next most probable number of clusters (two; male and female only).
To feed the next module (classification), we sampled the mean value, standard deviation, root mean square (RMS) and FFT amplitude of the received signals.
After preprocessing and named entity recognition, we selected the sentences with the gene IDs in the annotated data as the positive (evidence) and negative (non-evidence) examples for the next text classification module.
Based on these findings, IDH1 mutation status is becoming part of the standard diagnostic assessment of these tumors and will likely be included in the next WHO classification of diffuse gliomas [ 2].
The next largest classification comprised the remaining exposure groups, in which the 2 Gy X-ray, 1.0 and 1.5 Gy α-particle and 5 and 10 Gy X-ray were classified further from the controls in order of descending similarity respectively.
For the lingual and the occlusial mandibles, best classifications were 8 170 000 and 10.15 times more likely than the next best classifications predicting two cluster, respectively.
The final best classification was 163.04 times better than the next most probable classification and 160 000 times better than the classification estimating the next most probable number of clusters (two; male and female only).
This paper proposes Half-partition strategy of selecting and retaining non-support vectors of the current increment of classification – named as Candidate Support Vectors (CSV) – which are likely to become support vectors in the next increment of classification.
The next most common classification was conduction aphasia (6), then Broca's aphasia (4), and the least most common was a classification of Wernicke's aphasia (3).
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