Classified s-grams have been successfully used in cross-language information retrieval (CLIR) as an approximate string matching technique for translating out-of-vocabulary (OOV) words. For example, s-grams have consistently outperformed other approximate string matching techniques, like edit distance or n-grams. The Jaccard coefficient has traditionally been used as an s-gram based string proximity measure. However, other proximity measures for s-gram matching have not been tested. In the current study the performance of seven proximity measures for classified s-grams in CLIR context was evaluated using eleven language pairs. The binary proximity measures performed generally better than their non-binary counterparts, but the difference depended mainly on the padding used with s-grams. When no padding was used, the binary and non-binary proximity measures were nearly equal, though the performance at large deteriorated.