Wilsonian approach to the interaction $\phi^2(i\phi)^\varepsilon$
- URL: http://arxiv.org/abs/2211.06273v2
- Date: Fri, 13 Jan 2023 17:05:17 GMT
- Title: Wilsonian approach to the interaction $\phi^2(i\phi)^\varepsilon$
- Authors: Wen-Yuan Ai, Jean Alexandre and Sarben Sarkar
- Abstract summary: We study the renormalisation of the non-Hermitian $mathcalPmathcalT$-symmetric scalar field theory with the interaction $phi2(iphi)varepsilon$.
It is found to be renormalisable at the one-loop level only for integer values of $varepsilon$, a result which is not yet established within the $varepsilon$-expansion.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We study the renormalisation of the non-Hermitian
$\mathcal{P}\mathcal{T}$-symmetric scalar field theory with the interaction
$\phi^2(i\phi)^\varepsilon$ using the Wilsonian approach and without any
expansion in $\varepsilon$. Specifically, we solve the Wetterich equation in
the local potential approximation, both in the ultraviolet regime and with the
loop expansion. We calculate the scale-dependent effective potential and its
infrared limit. The theory is found to be renormalisable at the one-loop level
only for integer values of $\varepsilon$, a result which is not yet established
within the $\varepsilon$-expansion. Particular attention is therefore paid to
the two interesting cases $\varepsilon=1,2$, and the one-loop beta functions
for the coupling associated with the interaction $i\phi^3$ and $-\phi^4$ are
computed. It is found that the $-\phi^4$ theory has asymptotic freedom in
four-dimensional spacetime. Some general properties for the Euclidean partition
function and $n$-point functions are also derived.
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