Comparitive Study of Vector Space Model Techniques in Information Retrieval for Arabic Language
الخلاصة
Information retrieval is a process of getting the
desired data accurately and efficiently. Arabic Information
Retrieval system is considered as an active research area since
there are millions Arabic speakers need to retrieve documents,
images and videos on the Internet. Arabic is considered as one of
the most difficult languages in automatic Natural Language
Processing (NLP). All these aspects have encouraged researches
to develop Arabic Information Retrieval (IR) systems and models
to support the process of retrieving the most relevant documents
to the user’s query. In this paper, two techniques of Vector Space
Model (VSM) are used to retrieve Arabic text documents which
are Cosine Similarity technique and Inner Product technique.
The main objective of this research is to compare between these
two techniques in terms of retrieving the most relevant
documents that met the user’s needs. The result showed that
both techniques will retrieve the same order of the documents
that are related to the entered user’s query. Both techniques
perform well in Arabic information retrieval systems