“…VSA [12], [15], [18]- [20] is a computing framework providing methods of representing and manipulating concepts and their meanings in a high-dimensional space. VSA finds its applications in, for example, cognitive architectures [21], natural language processing [22]- [24], biomedical signal processing [1], [25], approximation of conventional data structures [26], [27], and for classification tasks such as gesture recognition [1], [28], cyber threat detection [29], physical activity recognition [30], fault isolation [31], [32]. Examples of efforts on using VSA for other than classification learning tasks are using data HVs for clustering [33]- [35], semi-supervised learning [36], collaborative privacy-preserving learning [37], [38], multi-task learning [39], [40], distributed learning [41], [42].…”