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Containment problems belong to the classical problems of (convex) geometry. In the proper sense, a containment problem is the task to decide the set-theoretic inclusion of two given sets, which is hard from both the theoretical and the practical perspective. In a broader sense, this includes, e.g., radii or packing problems, which are even harder. For some classes of convex sets there has been strong interest in containment problems. This includes containment problems of polyhedra and balls, and containment of polyhedra, which have been studied in the late 20th century because of their inherent relevance in linear programming and combinatorics.
Since then, there has only been limited progress in understanding containment problems of that type. In recent years, containment problems for spectrahedra, which naturally generalize the class of polyhedra, have seen great interest. This interest is particularly driven by the intrinsic relevance of spectrahedra and their projections in polynomial optimization and convex algebraic geometry. Except for the treatment of special classes or situations, there has been no overall treatment of that kind of problems, though.
In this thesis, we provide a comprehensive treatment of containment problems concerning polyhedra, spectrahedra, and their projections from the viewpoint of low-degree semialgebraic problems and study algebraic certificates for containment. This leads to a new and systematic access to studying containment problems of (projections of) polyhedra and spectrahedra, and provides several new and partially unexpected results.
The main idea - which is meanwhile common in polynomial optimization, but whose understanding of the particular potential on low-degree geometric problems is still a major challenge - can be explained as follows. One point of view towards linear programming is as an application of Farkas' Lemma which characterizes the (non-)solvability of a system of linear inequalities. The affine form of Farkas' Lemma characterizes linear polynomials which are nonnegative on a given polyhedron. By omitting the linearity condition, one gets a polynomial nonnegativity question on a semialgebraic set, leading to so-called Positivstellensaetze (or, more precisely Nichtnegativstellensaetze). A Positivstellensatz provides a certificate for the positivity of a polynomial function in terms of a polynomial identity. As in the linear case, these Positivstellensaetze are the foundation of polynomial optimization and relaxation methods. The transition from positivity to nonnegativity is still a major challenge in real algebraic geometry and polynomial optimization.
With this in mind, several principal questions arise in the context of containment problems: Can the particular containment problem be formulated as a polynomial nonnegativity (or, feasibility) problem in a sophisticated way? If so, how are positivity and nonnegativity related to the containment question in the sense of their geometric meaning? Is there a sophisticated Positivstellensatz for the particular situation, yielding certificates for containment? Concerning the degree of the semialgebraic certificates, which degree is necessary, which degree is sufficient to decide containment?
Indeed, (almost) all containment problems studied in this thesis can be formulated as polynomial nonnegativity problems allowing the application of semialgebraic relaxations. Other than this general result, the answer to all the other questions (highly) depends on the specific containment problem, particularly with regard to its underlying geometry. An important point is whether the hierarchies coming from increasing the degree in the polynomial relaxations always decide containment in finitely many steps.
We focus on the containment problem of an H-polytope in a V-polytope and of a spectrahedron in a spectrahedron. Moreover, we address containment problems concerning projections of H-polyhedra and spectrahedra. This selection is justified by the fact that the mentioned containment problems are computationally hard and their geometry is not well understood.
A memory checker for a data structure provides a method to check that the output of the data structure operations is consistent with the input even if the data is stored on some insecure medium. In [8] we present a general solution for all data structures that are based on insert(i,v) and delete(j) commands. In particular this includes stacks, queues, deques (double-ended queues) and lists. Here, we describe more time and space efficient solutions for stacks, queues and deques. Each algorithm takes only a single function evaluation of a pseudorandomlike function like DES or a collision-free hash function like MD5 or SHA for each push/pop resp. enqueue/dequeue command making our methods applicable to smart cards.
Using the notion of a root datum of a reductive group G we propose a tropical analogue of a principal G-bundle on a metric graph. We focus on the case G=GLn, i.e. the case of vector bundles. Here we give a characterization of vector bundles in terms of multidivisors and use this description to prove analogues of the Weil--Riemann--Roch theorem and the Narasimhan--Seshadri correspondence. We proceed by studying the process of tropicalization. In particular, we show that the non-Archimedean skeleton of the moduli space of semistable vector bundles on a Tate curve is isomorphic to a certain component of the moduli space of semistable tropical vector bundles on its dual metric graph.
This thesis covers the analysis of radix sort, radix select and the path length of digital trees under a stochastic input assumption known as the Markov model.
The main results are asymptotic expansions of mean and variance as well as a central limit theorem for the complexity of radix sort and the path length of tries, PATRICIA tries and digital search trees.
Concerning radix select, a variety of different models for ranks are discussed including a law of large numbers for the worst case behavior, a limit theorem for the grand averages model and the first order asymptotic of the average complexity in the quantile model.
Some of the results are achieved by moment transfer techniques, the limit laws are based on a novel use of the contraction method suited for systems of stochastic recurrences.
Tropical geometry is the geometry of the tropical semiring \[\mathbb{T}:=(\mathbb{R}\cup\{\infty\},\min,+).\] Classical algebraic structures correspond to tropical structures. If $I\lhd K[x_1,\ldots,x_n]$ is an ideal in a polynomial ring over a field $K$ with valuation $v$, then the classical algebraic variety correspond to the tropical variety $T(I)$. It is the set of all points $w$, such that the minimum $\min\{v(c_\alpha)+w\cdot\alpha\}$ is achieved twice for all $f=\sum_\alpha c_\alpha x^\alpha\in I$. So tropical geometry relates algebraic geometric problems with discrete geometric problems. In this thesis we obtain a tropical version of the Eisenbud-Evans Theorem which states that every algebraic variety in $\mathbb{R}^n$ is the intersection of $n$ hypersurfaces. We find out that in the tropical setting every tropical variety $T(I)$ can be written as an intersection of only $(n+1)$ tropical hypersurfaces. So we get a finite generating system of $I$ such that the corresponding tropical hypersurfaces intersect to the tropical variety, a so-called tropical basis. Let $I \lhd K[x_1,\ldots,x_n]$ be a prime ideal generated by the polynomials $f_1, \ldots, f_r$. Then there exist $g_0,\ldots,g_{n} \in I$ such that \[ T(I) \ = \ \bigcap_{i=0}^{n}T(g_i)\] and thus $\mathcal{G} := \{f_1, \ldots, f_r, g_0, \ldots, g_{n}\}$ is a tropical basis for $I$ of cardinality $r+n+1$. Tropical bases are discussed by Bogart, Jensen, Speyer, Sturmfels and Thomas where it is shown that tropical bases of linear polynomials of a linear ideal have to be very large. We do not restrict the tropical basis to consist of linear polynomials and therefore we get a shorter tropical basis. But the degrees of our polynomials can be very large. The main ingredient to get a short tropical basis is the use of projections, in particular geometrically regular projections. Together with the fact that preimages of projections of tropical varieties are themselves tropical varieties of a certain elimination ideal we get the desired result. Let $I \lhd K[x_1, \ldots, x_n]$ be an $m$-dimensional prime ideal and $\pi : \mathbb{R}^n \to \mathbb{R}^{m+1}$ be a rational projection. Then $\pi^{-1}(\pi(T(I)))$ is a tropical variety, namely \[ \pi^{-1}(\pi(T(I))) \ = \ T(J \cap K[x_1, \ldots, x_n]) \,\] Here $J$ is an ideal in $K[x_1,\ldots,x_n,\lambda_1,\ldots,\lambda_{n-m-1}]$ derived from the ideal $I$. We show that this elimination ideal is a principal ideal which yields a polynomial in our tropical basis. The advantage of our method is that we find our polynomials by projections and therefore we can use the results of Gelfand, Kapranov and Zelevinsky , of Esterov and Khovanskii , and of Sturmfels, Tevelev and Yu. With mixed fiber polytopes we get the structure and combinatorics of the image of a tropical variety and therefore the structure of the polynomials in our tropical basis. Let $I=\lhd K[x_1,\ldots,x_n]$ an $m$-dimensional ideal, generated by generic polynomials $f_1,\ldots, f_{n-m}$, $\pi:\mathbb{R}^n\to\mathbb{R}^{m+1}$ a projection and $\psi$ a projection presented by a matrix with a rowspace equal to the kernel of $\pi$. Then up to affine isomorphisms, the cells of the dual subdivision of $\pi^{-1} \pi T(I)$ are of the form \[ \sum_{i=1}^p \Sigma_{\psi} (C_{i1}^{\vee}, \ldots, C_{i{k}}^{\vee}) \] for some $p\in\mathbb{N}$ and faces $F_1, \ldots, F_p$ of $T(f_1)\cap\ldots\cap T(f_k)$ and the dual cell of $F_i\subseteq U = T(f_1)\cup\ldots\cup T(f_k)$ is given by $F_i^\vee=C_{i1}^{\vee}+ \ldots+ C_{ik}^{\vee}$ with faces $C_{i1}, \ldots, C_{i k}$ of $T(f_1), \ldots, T(f_{k})$. In case that we project a tropical curve we want to find the number of $(n-1)$-cells of the above form with $p>1$, i.e. the cells which are dual to vertices of $\pi(T(I))$ which are the intersection of the images of two non-adjacent $1$-cells of $T(I)$. Vertices of this type are called selfintersection points. We show that there exist a tropcal line $L_n\subset\mathbb{R}^n$ and a projection $\pi:\mathbb{R}^n\to\mathbb{R}^2$, such that $L_n$ has $\sum_{i=1}^{n-2}i$ selfintersection points. Furthermore we find tropical curves $\mathcal{C}\subset\mathbb{R}^n$, which are transversal intersections of $n-1$ tropical hypersurfaces of degrees $d_1,\ldots,d_{n-1}$ and a projection $\pi:\mathbb{R}^n\to\mathbb{R}^2$, such that $\mathcal{C}$ has at least $(d_1\cdot\ldots\cdot d_{n-1})^2\cdot \sum_{i=1}^{n-2}i) $ selfintersection points. A caterpillar is a certain simple type of a tropical line and for this type we show that it can have at most $\sum_{i=1}^{n-2}i$ selfintersection points.
In this paper, a translation of the visual description technique HyCharts to Hybrid Data-Flow Graphs (HDFG) is given. While HyCharts combine a data-flow and a control-flow oriented formalism for the specification of the architecture and the behavior of hybrid systems, HDFG allow the efficient and homogeneous internal representation of hybrid systems in computers and their automatic manipulation. HDFG represent a system as a data-flow network built from a set of fundamental functions.
The translation permits to combine the advantages of the different description techniques: The use of HyCharts for specification supports the abstract and formal interactive specification of hybrid systems, while HDFG permit the tool based optimization of hybrid systems and the synthesis of mixed-signal prototypes.