Pseudo‑Relevance Feedback Based Query Expansion Using Boosting Algorithm
Künye
RASHEED, Imran, Haider BANKA & Hamaid Mahmood KHAN. "Pseudo‑Relevance Feedback Based Query Expansion Using Boosting Algorithm". Artificial Intelligence Review, (2021).Özet
Retrieving relevant documents from a large set using the original query is a formidable
challenge. A generic approach to improve the retrieval process is realized using pseudo-relevance
feedback techniques. This technique allows the expansion of original queries with
conducive keywords that returns the most relevant documents corresponding to the original
query. In this paper, five different hybrid techniques were tested utilizing traditional query
expansion methods. Later, the boosting query term method was proposed to reweigh and
strengthen the original query. The query-wise analysis revealed that the proposed approach
effectively identified the most relevant keywords, and that was true even for short queries.
All the proposed methods’ potency was evaluated on three different datasets; Roshni, Hamshahri1,
and FIRE2011. Compared to the traditional query expansion methods, the proposed
methods improved the mean average precision values of Urdu, Persian, and English
datasets by 14.02%, 9.93%, and 6.60%, respectively. The obtained results were also established
using analysis of variance and post-hoc analysis.