Confounding analysis of s-level designs with multi-block variables

Abstract

In practical experiments, block variables often arise from multiple sources of heterogeneity. To address the confounding problem, this paper proposes a blocked aliased component-number pattern (B2-ACNP) to analyze the confounding properties of s-level designs with multi-block variables. We calculate the values of (B2-ACNP) via a blocked wordlength distribution matrix. The classification patterns of existing criteria can be expressed as functions of specific elements within the B2-ACNP, thereby stablishing connections within a unified framework. Further, we provide confounding algorithms and visualization methods of the B2-ACNP. Finally, case analysis clarifies the significant role of the B2-ACNP. The Python code is available in the Appendix.

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