IRFeb 19, 2015

Evolutionary algorithm based adaptive navigation in information retrieval interfaces

arXiv:1502.05535v1
Originality Incremental advance
AI Analysis

This addresses the issue of slow and inaccurate information retrieval for users in fields with unstructured knowledge, though it appears incremental as it builds on existing techniques.

The authors tackled the problem of inefficient information retrieval in interfaces by proposing an adaptive navigation system using an evolutionary algorithm and real-time collaborative feedback, which they claim reduces time and improves accuracy compared to state-of-the-art approaches.

In computer interfaces in general, especially in information retrieval tasks, it is important to be able to quickly find and retrieve information. State of the art approach, used, for example, in search engines, is not effective as it introduces losses of meanings due to context to keywords back and forth translation. Authors argue it increases the time and reduces the accuracy of information retrieval compared to what it could be in the system that employs modern information retrieval and text mining methods while presenting results in an adaptive human- computer interface where system effectively learns what operator needs through iterative interaction. In current work, a combination of adaptive navigational interface and real time collaborative feedback analysis for documents relevance weighting is proposed as an viable alternative to prevailing "telegraphic" approach in information retrieval systems. Adaptive navigation is provided through a dynamic links panel controlled by an evolutionary algorithm. Documents relevance is initially established with standard information retrieval techniques and is further refined in real time through interaction of users with the system. Introduced concepts of multidimensional Knowledge Map and Weighted Point of Interest allow finding relevant documents and users with common interests through a trivial calculation. Browsing search approach, the ability of the algorithm to adapt navigation to users interests, collaborative refinement and the self-organising features of the system are the main factors making such architecture effective in various fields where non-structured knowledge shall be represented to the users.

Foundations

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

Your Notes