Objective:
Since the adequacy of Learning Objects (LO) is a dynamic concept and
changes in its use, needs and evolution, it is important to consider the importance of LO in terms of
time to assess its relevance as the main objective of the proposed research. Another goal is to increase
the classification accuracy and precision.
Methods:
With existing IR and ranking algorithms, MAP optimization either does not lead to a
comprehensively optimal solution or is expensive and time - consuming. Nevertheless, Support
Vector Machine learning competently leads to a globally optimal solution. SVM is a powerful classifier
method with its high classification accuracy and the Tilted time window based model is computationally
efficient.
Results:
This paper proposes and implements the LO ranking and retrieval algorithm based on the
Tilted Time window and the Support Vector Machine, which uses the merit of both methods. The
proposed model is implemented for the NCBI dataset and MAT Lab.
Conclusion:
The experiments have been carried out on the NCBI dataset, and LO weights are assigned
to be relevant and non - relevant for a given user query according to the Tilted Time series
and the Cosine similarity score. Results showed that the model proposed has much better accuracy.