AIMar 19, 2021

Semantic Contextual Reasoning to Provide Human Behavior

arXiv:2103.10694v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of handling data explosion and resource limitations for intelligent systems in providing context-aware human behavior, but it appears incremental as it builds on existing ontology-based methods.

The paper tackles the problem of providing intelligent, personalized human behavior responses under resource constraints by proposing a model for semantic contextual reasoning and a diagnostic belief algorithm (DBA) to identify events and compute decision confidence. Experimental results in day-to-day routine queries show that query answers and confidence vary with user context.

In recent years, the world has witnessed various primitives pertaining to the complexity of human behavior. Identifying an event in the presence of insufficient, incomplete, or tentative premises along with the constraints on resources such as time, data and memory is a vital aspect of an intelligent system. Data explosion presents one of the most challenging research issues for intelligent systems; to optimally represent and store this heterogeneous and voluminous data semantically to provide human behavior. There is a requirement of intelligent but personalized human behavior subject to constraints on resources and priority of the user. Knowledge, when represented in the form of an ontology, procures an intelligent response to a query posed by users; but it does not offer content in accordance with the user context. To this aim, we propose a model to quantify the user context and provide semantic contextual reasoning. A diagnostic belief algorithm (DBA) is also presented that identifies a given event and also computes the confidence of the decision as a function of available resources, premises, exceptions, and desired specificity. We conduct an empirical study in the domain of day-to-day routine queries and the experimental results show that the answer to queries and also its confidence varies with user context.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes