TY - JOUR AB - Purpose Financial ratios are routinely used as predictors in modelling tasks where accounting information is required. The purpose of this paper is to discuss such use, showing how to improve the effectiveness of ratio-based models.Design/methodology/approach First, the paper exposes the inadequacies of ratios when used as multivariate predictors. It then develops a theoretical foundation and methodology to build accounting-based models. Experiments then verify that this methodology outperforms the conventional methodology.Findings From plausible assumptions about the cross-sectional behaviour of accounting data, the paper shows that the effect of size, which ratios remove, can also be removed by modelling algorithms, which facilitates the discovery of meaningful predictors and leads to markedly more effective models.Research limitations/implications The paper covers cross-sectional modelling only, accounting identities and other interactions between line items are ignored, the methodology is especially appropriate in tasks where the effectiveness of the model is seen as a valued quality.Practical implications The need to select ratios among many alternatives is avoided, models become more accurate and robust, less biased and less likely to generate missing values, model construction is less arbitrary.Originality/value The paper provides a solid foundation for accounting-based modelling, by developing a whole new methodology that can end the uncritical use of modelling remedies currently prevailing and release the full relevance of accounting information when utilised to support investments and other value-bearing decisions. VL - 20 IS - 2 SN - 0967-5426 DO - 10.1108/JAAR-01-2018-0006 UR - https://doi.org/10.1108/JAAR-01-2018-0006 AU - Trigueiros Duarte PY - 2019 Y1 - 2019/01/01 TI - Improving the effectiveness of predictors in accounting-based models T2 - Journal of Applied Accounting Research PB - Emerald Publishing Limited SP - 207 EP - 226 Y2 - 2024/04/23 ER -