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Suggestions for Further Research Some further works that could be done are:

In document CHAPTER ONE INTRODUCTION (Page 125-136)

SUMMARY OF FINDINGS, CONCLUSION, CONTRIBUTIONS TO KNOWLEDGE AND SUGGESTIONS FOR FURTHER RESEARCH

5.4 Suggestions for Further Research Some further works that could be done are:

(i) Studying BL-GARCH models from Non-Parametric perspectives.

(ii) Estimation of BL-GARCH (1, 1) and BL-GARCH (1, 1)-Volume Models using Time Series of Counts.

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In document CHAPTER ONE INTRODUCTION (Page 125-136)

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