Exact(59)
Continuous demographics, clinical, and cardiorespiratory variables for each broad diagnostic entity (i.e., schizophrenia spectrum disorders vs. bipolar spectrum disorders) are presented in Table 2.
PMI of an analyzed entity i can be operationalized as a dichotomous variable.
The delay from each entity i varies between a best case and a worst case delay time, denoted as WCDT i.
In other words, the Focus of an entity i represents its own view while the Nimbus represents the view of the entity j about which i needs awareness.
end{aligned} Note that (hbox {ID}_i ) is used as the public key of the entity i. Compute the entity i (^prime )s extended ID, ({R}_i) as follows: begin{aligned} {R}_i= & ( {hbox {ID}_i } )^{e}( {hbox {mod},N} )= & (y_{i1}, y_{i2},ldots},y_{it,y_{it} ),y_{ij} in { {0,1} },left( {1le jle t}. right) end{aligned}.
The model depicts possible effects of antecedents to PMI of an entity i (e.g., an acquiring or an acquired entity) at a time t (usually, the year), where ε it is the unobserved error term.
In its simplest case, the nimbus of entity j can act as its focus and the focus of entity i can acts as its nimbus thus making j aware about i in a reciprocal fashion.
where n (n ≥ 1) is the number of nesting level of MNN, LD i-j is the propagation delay between entities i and j, and D i is the processing delay of entity i.
Based on these information, we adjust node potential for the internal entities by assigning a severity score (1 to 3 for low, medium, and high-risk alerts)to each type of suspicious activities exemplified above and summing up the severities of all suspicious activities associated with an entity i to get total severity S i.
Since an entity i may be flagged multiple times for the same or different types of suspicious behaviors, to avoid being overshadowed by a few outliers, we transform the aggregated severity score using the sigmoid function P i = 1 1 + exp ( − S i ).
Similar(1)
Measurable Entity Is instance of Measurable Entity Type MEM-A1 Measurable Entity Type Is characterized by Measurable Element .
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