A notable result from analysis of Boolean functions is the Basic Invariance Principle (BIP), a quantitative nonlinear generalization of the Central Limit Theorem for multilinear polynomials. We present a generalization of the BIP for bivariate multilinear polynomials, i.e., polynomials over two n-length sequences of random variables. This bivariate invariance principle arises from an iterative application of the BIP to bound the error in replacing each of the two input sequences. In order to prove this invariance principle, we first derive a version of the BIP for random multilinear polynomials, i.e., polynomials whose coefficients are random variables. As a benchmark, we also state a naive bivariate invariance principle which treats the two input sequences as one and directly applies the BIP. Neither principle is universally stronger than the other, but we do show that for a notable class of bivariate functions, which we term separable functions, our subtler principle is exponentially tighter than the naive benchmark.
翻译:从对布尔函数的分析中得出一个显著的结果,即Bolian 函数的基本误差原则(BIP),这是多线性多元数中中央限制理论的量化非线性概括。我们对双线多线多线多线性多线性函数,即两个随机变量长序列的多线性多线性多线性多线性函数,提出了BIP的概括性结果。这种双轨性误差原则来自BIP的迭接应用,以约束替换两个输入序列中的每个序列的错误。为了证明这种误差原则,我们首先为随机多线性多线性多线性多线性多线性参数,即其系数是随机变量的多线性多线性多线性多线性多线性变量,得出了BIP的版本。作为基准,我们还指出了将两个输入序列作为一处理并直接应用BIP的天性两边性两异性原则。两个原则都不普遍比其他原则强,但是我们确实表明,对于一个显著的二等函数类别,我们称之为分线性函数,我们的精细度原则比天性基准要快得多。