Hello,
I had a couple of very random (and hopefully easy) questions about videos 7a and 7b from last year I was hoping someone could answer for me.
1. When talking about the spread for LVaR, how exactly is that computed? What is a 2% spread? Does that just mean, for example, if a security has a mid marlet price of $100 and its spread is $2 ($99 bid and $101 offer)then it has a spread of 2%?
2. In slide 47 of 7b, it says that a heavy tailed distribution is one in which its tails are not exponentially bounded. Could you please briefly explain what is meant by this? The reason I ask is that in the source material, it looks like this definition is reversed. It says that it consideres a distribution light tailed if it has "finite moments of all order". The exponential, weibull, gamma and Lognormal have "infinite" maximal moments and the other distributions have finite moments. Yet the four that have "infinite" moments are the ones that are considered light tailed. Is something backwards?
3. In slide 53, you say that LDA assumes losses are iid and distributed according to some distribution F . Are you actually referring to the F distribution or are you just following some convention from the reading that names the severity distribution "distribution F"?
4. Finally, you use the term "unit of measure" quite frequently and I am not really sure what this is referring to.
Sorry for all of the random questions
Shannon
I had a couple of very random (and hopefully easy) questions about videos 7a and 7b from last year I was hoping someone could answer for me.
1. When talking about the spread for LVaR, how exactly is that computed? What is a 2% spread? Does that just mean, for example, if a security has a mid marlet price of $100 and its spread is $2 ($99 bid and $101 offer)then it has a spread of 2%?
2. In slide 47 of 7b, it says that a heavy tailed distribution is one in which its tails are not exponentially bounded. Could you please briefly explain what is meant by this? The reason I ask is that in the source material, it looks like this definition is reversed. It says that it consideres a distribution light tailed if it has "finite moments of all order". The exponential, weibull, gamma and Lognormal have "infinite" maximal moments and the other distributions have finite moments. Yet the four that have "infinite" moments are the ones that are considered light tailed. Is something backwards?
3. In slide 53, you say that LDA assumes losses are iid and distributed according to some distribution F . Are you actually referring to the F distribution or are you just following some convention from the reading that names the severity distribution "distribution F"?
4. Finally, you use the term "unit of measure" quite frequently and I am not really sure what this is referring to.
Sorry for all of the random questions
Shannon