A newly developed Three‐Dimensional Holographic Vector of Atomic Interaction Field (3D‐HoVAIF) was used to describe the chemical structures of 35 anti‐human immunodeficiency virus drugs as 1‐[(2‐Hydroxyethoxy)‐Methyl]‐6‐(Phenylthio)Thymine (HEPT). Here two Quantitative Structure–Activity Relationship (QSAR) models were built by both Partial Least Square (PLS) regression and Support Vector Machine (SVM) regression. Both estimation stability and prediction ability of these models were strictly analyzed by both internal and external validations. The correlation coefficient (R2) of established PLS and SVM models, Leave‐One‐Out (LOO) Cross‐Validation (CV), prediction values versus experimental ones of external samples were Rcum2=0.922, QCV2=0.656, Qext2=0.624 (PLS) and Rcum2=0.821, QCV2=0.797, Qext2=0.771 (SVM), respectively. The results of SVM were found to be better than those of PLS and Multiple Linear Regression (MLR) as previously reported by Garg et al. (Chem. Rev. 1999, 99, 3525–3601), which had both favorable estimation stability and good prediction capabilities. Satisfactory results showed that 3D‐HoVAIF could preferably express information related to biological activity of HEPT.