Separation Principles in Independent Process Analysis
نویسنده
چکیده
Short Summary (in English) 66 Short Summary (in Hungarian) 67 ii Acknowledgements First of all, I would like to express my thanks to my supervisor András L®rincz for the continuous support and trust. I'm deeply indebted to the members of his research group for the friendly atmosphere and for their readiness to help. Namely, to Zoltán Bárdosi, István Szita and Bálint Takács. I'm especially grateful to Barnabás Póczos for our coloquies. I would also like to thank my teacher all the knowledge I gained over the years. I would like to say thanks to the US Air Force (EOARD), to the Neumann János Society, to the Bliss Foundation and to the Department of Information Systems for the nancial support of my work. I owe my parents thank for helping me during my studies and for all what a peaceful family life can provide. Thanks to my sister and to her little naughty children for always brightening me up with their joy and playfullness.
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