Pedigree data have provided indispensable information for the study of ecology and evolution. Improvement of bioinformatics guidelines for discovering informative single nucleotide polymorphisms (SNPs) from genomic data is essential for pedigree reconstruction because of the trade‐off between the quantity (number of SNPs), quality (minor allele frequency [MAF]), and call rate (CR). However, there are few practical reports assessing the optimal balance of SNP filtering parameter combinations while maintaining a sufficient number of SNPs required for accurate pedigree analysis. In this study, we tested some bioinformatic pipelines for accurate SNP‐based parentage assignment and pedigree reconstruction in a wild population of red‐spotted masu salmon, Oncorhynchus masou ishikawae. We produced nearly complete parentage assignments using any SNP sets filtered for different MAF and CR values. For full sibling and half‐sibling assignments, mid‐point filtered SNP sets performed well. This indicates the significant effects of SNP filtering parameter combinations on pedigree reconstruction in a multi‐generational population. Considering the balance between the quantity and quality of SNP data is essential for accurately inferring pedigrees.