- Joined
 - 9/20/14
 
- Messages
 - 2
 
- Points
 - 11
 
I am in the final year of my applied stats masters and I am racking my brain looking for topics for my dissertation. I have twelve months to complete it, and I will be doing it full-time. 
Some broad areas that I would like to learn about would be:
- Market microstructure
- Statistical arbitrage techniques
- Detection of predatory trading (perhaps from HFT)
- Detection of seasonality or diurnal effects in intraday data
- Detection of toxicity of order flow
Some potential statistical techniques I would like to use to get proficient at are:
- Kernel methods such as SVM
- Hidden Markov models and Kalman filters
- Multivariate time series and co-integration
The problems I have however are:
1. I don't really know what the interesting or hot questions in these areas are
2. I don't know which of these topics are realistically within the bounds of my current knowledge
3. Availability of data
The last point I think is my biggest problem. For instance if I decide to look into detection of HF predatory trading tactics, chances are I will need Level II market data with full order book depth, which I clearly will not be able to pay for, nor do I suppose will my university have relationships with any exchanges in order to get it!
So in summary, I'm looking for a dissertation topic that would hopefully get me noticed by some quant funds at the end of this (too ambitious?), would enable me to become proficient with modern computationally-intensive statistical techniques that leverage my programming background, and that are still feasible with respect to my personal capabilities and also data availability.
I would be hugely appreciative of any advice anyone could offer. Thanks in advance!
	
		
			
		
		
	
				
			Some broad areas that I would like to learn about would be:
- Market microstructure
- Statistical arbitrage techniques
- Detection of predatory trading (perhaps from HFT)
- Detection of seasonality or diurnal effects in intraday data
- Detection of toxicity of order flow
Some potential statistical techniques I would like to use to get proficient at are:
- Kernel methods such as SVM
- Hidden Markov models and Kalman filters
- Multivariate time series and co-integration
The problems I have however are:
1. I don't really know what the interesting or hot questions in these areas are
2. I don't know which of these topics are realistically within the bounds of my current knowledge
3. Availability of data
The last point I think is my biggest problem. For instance if I decide to look into detection of HF predatory trading tactics, chances are I will need Level II market data with full order book depth, which I clearly will not be able to pay for, nor do I suppose will my university have relationships with any exchanges in order to get it!
So in summary, I'm looking for a dissertation topic that would hopefully get me noticed by some quant funds at the end of this (too ambitious?), would enable me to become proficient with modern computationally-intensive statistical techniques that leverage my programming background, and that are still feasible with respect to my personal capabilities and also data availability.
I would be hugely appreciative of any advice anyone could offer. Thanks in advance!