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arxiv: 1902.03714 · v1 · pith:DMPUXTP3new · submitted 2019-02-11 · 📊 stat.AP · q-fin.ST· q-fin.TR

Hawkes processes for credit indices time series analysis: How random are trades arrival times?

classification 📊 stat.AP q-fin.STq-fin.TR
keywords credithawkesindicesarrivalauthorsdatamethodmodel
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Targeting a better understanding of credit market dynamics, the authors have studied a stochastic model named the Hawkes process. Describing trades arrival times, this kind of model allows for the capture of self-excitement and mutual interactions phenomena. The authors propose here a simple yet conclusive method for fitting multidimensional Hawkes processes with exponential kernels, based on a maximum likelihood non-convex optimization. The method was successfully tested on simulated data, then used on new publicly available real trading data for three European credit indices, thus enabling quantification of self-excitement as well as volume impacts or cross indices influences.

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