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At progressively deeper penetrations, the early positive component reduced in amplitude and the negative component came earlier and increased in amplitude.
A significant positive correlation of large effect size was founded between the BDI-II and the negative component of the subscale "Impact of Experiences" (r = 0.53, p <0.01).
There was a significant correlation, of average effect size, between FAST and the negative component of the subscale "Impact of Experiences" (r = 0.44, p <0.05).
Sites under moderate selection (f ≳ σ ˜ ) are still partially degraded by interference, and the negative component of fitness flux (i.e., the contribution from deleterious substitutions) is peaked in this regime (see Figure S4 in File S1).
The components of interest were the face-specific N170, recorded as the most negative peak between 170 and 300 ms at T5 and T6, left and right temporal cortex respectively, and at midline; the P3a measured as the most positive peak between 350 and 650 ms and the negative component; and Nc, defined as the average amplitude between 400 and 850 ms (Latency data are not therefore provided for the Nc).
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These correlations were significant and with an average effect size for the positive components of subscales "Impact of Experiences" (r = 0.40, p <.05), "Impact of Support in Experiences" (r = 0.39, p <0.05) and "Dimensions of Experiences" (r = 0.40, p <0.05), and for the negative component of subscale "Impact of Experiences" (r = -0.43, p <0.05).
Instead of using a code with base 3 to encode the three states, LTP uses two binary codes representing the positive and the negative components of the ternary code, i.e., two binary codes coding for the two states {-1,1}.
Instead of using a code with base 3 to encode the three states in Eq. 5, LTP uses two binary codes representing the positive and the negative components of the ternary code, i.e., two binary codes coding for the two states {−1, 1}.
Extracting the positive and the negative components of evaluative feedback is supported by both our observations here and in the literature with respect to representation of reward and aversion prediction [44].
The three dimensions were measured by several questionnaires, notably the Perceptual Aberration and Magical ideation scales for the positive component, the cognitive slippage scale and the odd beliefs subscale of the Schizotypal Personality Questionnaire for the disorganized component and the RSAnS for the negative component.
Briefly, binding was optimal for lipid mixtures with an overall negative charge of 50% [24] achieved by 1∶1 mixtures containing either DOPG or PBPS as the negative component, and EYPC as the zwitterionic component.
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