Difference between revisions of "Mathematical Background"

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Topological and geometrical data analysis are fundamentally built on ideas and results of algebraic topology. Main notions: simplicial complex, homology, ...
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Topological data analysis (TDA) techniques are fundamentally built on ideas and results of algebraic topology. The persistent homology toolbox includes rigorous mathematical theorems from general and algebraic topology, justifying the constructions undertaken. As motivated below, there are three fundamental results that make the classical theory of persistent homology sensible. In addition to these, we introduce relevant mathematical objects, mainly following  Carlsson 2009<ref>CARLSSON, Gunnar. Topology and data. ''Bulletin of the American Mathematical Society'', 2009, 46. Jg., Nr. 2, S. 255-308. [https://doi.org/10.1090/S0273-0979-09-01249-X doi:10.1090/S0273-0979-09-01249-X]</ref>.
  
Data is always given by point clouds in <math> \mathbb{R}^n </math>. In order to use these topological notions it is necessary to first translate the data into topological spaces. This step usually requires the notion of distance, i.e. a metric on <math> \mathbb{R}^n </math> that is tailored to the system from which the data arises. thus enter geometry: metric spaces, ...
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== Introduction ==
  
The distance of points in <math>\mathbb{R}^n</math> is a notion that is usually not inherent to the data. Also there is no distinguished value of distance, so one should consider all values. The algebraic theory gives relations between different values of the parameter.
+
=== Topological Data Analysis, abstractly ===
 
+
Data of interest is given by means of point clouds, that is, finite subsets <math> X\subset \mathbb{R}^n </math>. In order to associate topological notions to [math]X[/math] it is necessary to first translate the data into topological spaces. This step usually requires the notion of a distance, that is, a metric on <math> \mathbb{R}^n </math>, which is tailored to the nature of the data. This way, geometry enters the stage: The distance of points in <math>\mathbb{R}^n</math> is a notion that is usually not inherent to the data. Additionally, on different length scales different information may be encoded, which is why a priori there exists no distinguished value of a distance. Instead, unifying features that persist over a broad range of length scales may be dominant, while others may be subdominant, generically. The persistence of topological features is precisely what TDA techniques are capable to capture via the structure of persistent homology groups.
Therefore the applications of topological ideas to data analysis can almost always be divided into the following two steps
 
  
 +
To this end, the applications of topological ideas to data analysis can almost always be divided into the following two steps
 
$$
 
$$
 
\text{Data} \stackrel{geometry}{\longrightarrow} \text{simplicial complex} \stackrel{algebraic\;topology}{\longrightarrow} \text{invariants inherent to the data set}  
 
\text{Data} \stackrel{geometry}{\longrightarrow} \text{simplicial complex} \stackrel{algebraic\;topology}{\longrightarrow} \text{invariants inherent to the data set}  
 
$$
 
$$
  
== Fundamental Definitions ==
+
=== The Need for Theorems ===
 +
Let us assume that our initial point cloud data [math]D=\{p_i \in \mathbb{R}^n\}[/math] arises as a finite subset of a paracompact topological space [math]X[/math] embedded in [math]\mathbb{R}^n[/math]. TDA techniques have the purpose to determine characteristic properties of the topological space [math]X[/math] from the point cloud [math]D[/math].
 +
 
 +
For any value of [math]r[/math] the open balls centered at the points are a good open cover [math]\mathcal{U}_r = \{B_r(p_i)\}[/math] of the compact space [math]Y_r=\bigcup B_r(p_i)[/math]. Recall that the Čech complex [math]\check{\mathcal C}(D)[/math] is the filtered complex of the [[Mathematical Background#The nerve theorem|nerves]] [math]\check{\mathcal C}_r(D) = \{ N(\mathcal U_r), r\in [0,\infty) \}[/math]. Thus, by the [[Mathematical Background#The nerve theorem|nerve theorem]] there exists a homotopy equivalence [math]\check{\mathcal C}_r(D) \simeq Y_r[/math] for each [math]r[/math].
 +
 
 +
For a moment assume that there exists a value [math]r[/math], such that [math]X\cap\mathcal U_r[/math] is a good open cover of [math]X[/math]. Then, at this value of [math]r[/math] the Čech complex is actually homotopy equivalent to [math]X[/math] due to the [[Mathematical Background#The nerve theorem|nerve theorem]]. This motivates the standard approach to topological data analysis, in which we assume that - generically - we are in a situation with the above assumptions holding.
 +
 
 +
However, it is not clear at which value of [math]r[/math] this situation occurs, which means that we need to consider the radius-dependent, 1-parameter family of Čech complex of [math]D[/math] as a whole. Then, the topological invariants of this filtered complex will contain characteristic properties of [math]X[/math] - encoded in their radius-dependence. The homology groups of a 1-parameter family of filtered simplicial complexes actually have the structure of a [[Mathematical Background#Persistence modules|persistence module]]. According to the [[Mathematical Background#The structure theorem|structure theorem]], we can completely classify persistence modules by means of all birth and death parameters of homology classes, providing us with a useful and efficient structural description of multi-scale topological information.
 +
 
 +
Unfortunately, the situation described so far does not occur in data analysis scenarios, typically. The hypotheses of [math]X[/math] being embedded and there being a radius [math]r[/math] that admits a good open cover of the embedding of [math]X[/math] by balls with this radius are problematic. Furthermore, measurements are always endowed with uncertainties, such that the points of [math]D[/math] do not necessarily lie on the image of [math]X[/math] in [math]\mathbb{R}^n[/math].
 +
 
 +
This is where the [[Mathematical Background#Stability Theorem|stability theorem]] enters, which makes precise the following statement: a small variation of the metric results in only a small variation of the associated persistence module. Although this result does not fully invalidate the objections of the previous paragraph, it is crucial for inferring topological information of [math]X[/math] from [math]D[/math].
 +
 
 +
== The Nerve Theorem ==
 +
Often it is desirable to construct simplicial complexes which compute the homology of an underlying space [math]X[/math] or are strongly related to it. To rigorously guarantee for this one may look for a homotopy equivalence from [math]X[/math] to the simplicial complex. Numerous simplicial complexes exist that may be associated to [math]X[/math]. A particularly simple and in our setting useful variant will be the nerve of a covering of a topological space.
 +
 
 +
Given the nerve theorem below, which provides to us such a homotopy equivalence, the need for methods to generate coverings remains. This directly leads to the construction of different complexes such as the Čech complex or the Alpha complex. This way, the nerve theorem is a cornerstone in describing the homotopy type of a topological space via a finite point cloud sampled from it and associated simplicial complexes.
  
== Fundamental Theorems ==
+
=== The Nerve of a Covering ===
There are three fundamental results that make the classical theory of persistent homology work
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Let [math]X[/math] be a topological space, and let [math]\mathcal U=\{U_i\}[/math] be any covering of [math]X[/math]. The ''nerve'' of [math]\mathcal U[/math], denoted by [math]N\mathcal U[/math], is defined as the abstract simplicial complex with vertex set [math]A[/math], and where a family [math]\{i_0,\dots, i_k\}[/math] spans a [math]k[/math]-simplex if and only if [math]U_{i_0}\cap \dots \cap U_{i_k}\neq \emptyset[/math].
  
=== Nerve Theorem ===
+
=== The Nerve Theorem ===
 
Let [math]X[/math] be a paracompact space and [math]\mathcal U=\{U_i\}[/math] a good open cover, that is every nonempty intersection of finitely many sets in [math]\mathcal U[/math] is contractible.
 
Let [math]X[/math] be a paracompact space and [math]\mathcal U=\{U_i\}[/math] a good open cover, that is every nonempty intersection of finitely many sets in [math]\mathcal U[/math] is contractible.
  
Then the nerve [math]N\mathcal U[/math] is homotopy equivalent to [math]X[/math].
+
Then the nerve [math]N\mathcal U[/math] is ''homotopy equivalent'' to [math]X[/math].
  
=== Structure Theorem ===
+
== The Structure Theorem ==
Let /(D/) be a finite subset of <math>X</math>. Then the persistence module is a representation of a linear quiver
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Given a 1-parameter family of filtered simplicial complexes, say depending on a length scale [math]r[/math], its persistent homology groups form a persistence module. Additional information enters the stage through the parameter [math]r[/math], the description of which is elegantly captured by the structure theorem <ref>ZOMORODIAN, Afra; CARLSSON, Gunnar. Computing persistent homology. ''Discrete & Computational Geometry'', 2005, 33. Jg., Nr. 2, S. 249-274. [https://doi.org/10.1007/s00454-004-1146-y doi:10.1007/s00454-004-1146-y]</ref>. Accordingly, the structure of a barcode, that is, a multiset of possibly infinitely long intervals, may be used to describe persistent homology groups of a 1-parameter family of simplicial complexes.
  
=== Stability Theorem ===
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=== Persistence Modules ===
 +
Following Otter et al 2017 <ref name=":0">OTTER, Nina, et al. A roadmap for the computation of persistent homology. ''EPJ Data Science'', 2017, 6. Jg., Nr. 1, S. 17. [https://doi.org/10.1140/epjds/s13688-017-0109-5 doi:10.1140/epjds/s13688-017-0109-5]</ref>, a pair [math](\{M_i\}_{i\in I}, \{\Phi_{i,j}: M_i\to M_j\}_{i\leq j})[/math], where [math](I, \leq )[/math] is a totally ordered set, such that for each [math]i[/math], we have that [math]M_i[/math] is a vector space and the maps [math]\Phi_{i,j}[/math] are linear maps satisfying the functoriality property [math]\Phi_{k,j}\circ \Phi_{i,k} = \Phi_{i,j}[/math] for all [math]i\leq k \leq j[/math], is called a ''persistence module''.
  
=== Explanation of Relevance ===
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=== Persistent Homology Groups ===
Let's assume that our initial point cloud data [math]D=\{p_i \in \mathbb{R}^n\}[/math] arises as a finite subset of a paracompact topological space [math]X[/math] that is embedded in [math]\mathbb{R}^n[/math]. In topological data analysis we want to determine the characteristic properties of the topological space [math]X[/math] from the point cloud [math]D[/math].
+
Let [math]C_1\subset C_2\subset \dots \subset C_l=C[/math] be a filtered simplicial complex. The [math]p[/math]''th persistent homology of'' [math]C[/math] is the pair $$(\{H_p(C_i)\}_{1\leq i \leq l} , \{f_{i,j}\}_{1\leq i\leq j \leq l}\}),
 +
$$
 +
where for all [math]i,j\in \{1,\dots, l\}[/math] with [math]i\leq j[/math], the linear maps [math]f_{i,j}: H_p(C_i)\to H_p(C_j)[/math] are the maps induced by the inclusion maps [math]C_i\to C_j[/math].
  
For any value of [math]r[/math] the open balls centered at the points are a good open cover [math]\mathcal{U}_r = \{B_r(p_i)\}[/math] of the compact space [math]Y_r=\cup B_r(p_i)[/math]. Recall that the Čech complex [math]{C}_r(D)[/math] is just the filtered complex of nerves [math]N(\mathcal U_r)[/math], so by the nerve theorem there is a homotopy equivalence [math]{C}_r(D) \simeq Y_r[/math] for each [math]r[/math].
+
=== The Structure Theorem ===
 +
Let [math]C_1\subset C_2\subset \dots \subset C_l=C[/math] be a filtered simplicial complex, for example the 1-parameter family of Čech complexes, [math]\check{\mathcal C}(D)[/math], <math>D</math> being as before a finite subset of <math>X</math>. Then the [math]p[/math]th persistence module of homology classes of [math]C[/math] with coefficients in a field <math>k</math> decomposes isomorphically as follows,$$H_p( C,k) \simeq \bigoplus_{i=1}^{r} I_{[b_i,d_i]}
 +
$$
 +
where the <math>I_{[b_i,d_i]}</math> denote the indecomposable persistence modules
 +
$$
 +
I_{[b_i,d_i]} = \left\{ \begin{matrix} k & t\in[b_i,d_i] \\ 0 & \text{else } \end{matrix} \right.
 +
$$
 +
and <math>\{[b_i,d_i], 1\leq i \leq r\}</math> is a finite collection of intervals, for the example of [math]\check{\mathcal C}(D)[/math] with <math>r\leq|D|</math>.
  
For the moment assume that there is a value [math]r[/math], such that [math]X\cap\mathcal U_r[/math] is a good open cover of $X$. Then at this value of [math]r[/math] the Čech complex is actually homotopy equivalent to [math]X[/math] due to the '''nerve theorem'''. This motivates the standard approach to topological data analysis, where we assume that generically we are in a situation, where the above assumptions hold.
+
== The Stability Theorem ==
 +
Stability theorems for persistence diagrams exist in multiple different fashions <ref>COHEN-STEINER, David, et al. Lipschitz functions have L p-stable persistence. ''Foundations of computational mathematics'', 2010, 10. Jg., Nr. 2, S. 127-139.</ref><ref name=":1">COHEN-STEINER, David; EDELSBRUNNER, Herbert; HARER, John. Stability of persistence diagrams. ''Discrete & Computational Geometry'', 2007, 37. Jg., Nr. 1, S. 103-120.</ref><ref>CHAZAL, Frédéric, et al. Proximity of persistence modules and their diagrams. In: ''Proceedings of the twenty-fifth annual symposium on Computational geometry''. ACM, 2009. S. 237-246.</ref><ref>BAUER, Ulrich; LESNICK, Michael. Persistence Diagrams as Diagrams: A Categorification of the Stability Theorem. ''arXiv preprint arXiv:1610.10085'', 2016.</ref>. We focus here on the first such stability result obtained by Cohen-Steiner, Edelsbrunner and Harer in 2007 <ref name=":1" />.
  
However, it is not clear at which value of [math]r[/math] this situation occurs, which means we need to consider the Čech complex of [math]D[/math] as a a whole. Then the topological invariants of this filtered complex will contain the characteristic properties of [math]X[/math]. The homology groups of a 1-parameter filtered complex actually have the structure of a persistence module. The '''structure theorem''' now tells us that we have a complete classification of these persistence modules by the birth and death values of homology classes.
+
=== Stability Theorem ===
 +
Let [math]X[/math] be a triangulable space with continuous tame functions [math]f,g:X\to \mathbb{R}[/math]. Then the persistence diagrams satisfy $$d_B(D(f),D(g))\leq ||f-g||_{\infty}.$$ Here, [math]D(f), D(g)[/math] specify the persistence diagrams of the filtration of sublevel sets of the functions [math]f,g[/math], respectively, [math]d_B[/math] denotes the Bottleneck distance between two persistence diagrams and [math]||f-g||_{\infty}[/math] is the supremum of [math]f-g[/math].
  
Finally, the situation as described so far is not one we can expect to hold in real-life. The hypotheses of [math]X[/math] being embedded and there being a radius [math]r[/math] that admits a good open cover of the embedding of [math]X[/math] by balls with this radius are problematic. Furthermore, measurements are always endowed with uncertainties, such that the points of [math]D[/math] do not necessarily lie on the image of [math]X[/math] in [math]\mathbb{R}^n[/math].
+
In words, persistence diagrams are stable under possibly irregular perturbations of small amplitude.
  
This is where the '''stability theorem''' enters, which makes precise the following statement: a small variation of the metric results in only a small variation of the associated persistence module. This result does not fully invalidate the objections of the previous paragraph, though.
+
== References ==
 +
<references />

Latest revision as of 09:08, 26 October 2019

Topological data analysis (TDA) techniques are fundamentally built on ideas and results of algebraic topology. The persistent homology toolbox includes rigorous mathematical theorems from general and algebraic topology, justifying the constructions undertaken. As motivated below, there are three fundamental results that make the classical theory of persistent homology sensible. In addition to these, we introduce relevant mathematical objects, mainly following Carlsson 2009[1].

Introduction

Topological Data Analysis, abstractly

Data of interest is given by means of point clouds, that is, finite subsets [math] X\subset \mathbb{R}^n [/math]. In order to associate topological notions to [math]X[/math] it is necessary to first translate the data into topological spaces. This step usually requires the notion of a distance, that is, a metric on [math] \mathbb{R}^n [/math], which is tailored to the nature of the data. This way, geometry enters the stage: The distance of points in [math]\mathbb{R}^n[/math] is a notion that is usually not inherent to the data. Additionally, on different length scales different information may be encoded, which is why a priori there exists no distinguished value of a distance. Instead, unifying features that persist over a broad range of length scales may be dominant, while others may be subdominant, generically. The persistence of topological features is precisely what TDA techniques are capable to capture via the structure of persistent homology groups.

To this end, the applications of topological ideas to data analysis can almost always be divided into the following two steps $$ \text{Data} \stackrel{geometry}{\longrightarrow} \text{simplicial complex} \stackrel{algebraic\;topology}{\longrightarrow} \text{invariants inherent to the data set} $$

The Need for Theorems

Let us assume that our initial point cloud data [math]D=\{p_i \in \mathbb{R}^n\}[/math] arises as a finite subset of a paracompact topological space [math]X[/math] embedded in [math]\mathbb{R}^n[/math]. TDA techniques have the purpose to determine characteristic properties of the topological space [math]X[/math] from the point cloud [math]D[/math].

For any value of [math]r[/math] the open balls centered at the points are a good open cover [math]\mathcal{U}_r = \{B_r(p_i)\}[/math] of the compact space [math]Y_r=\bigcup B_r(p_i)[/math]. Recall that the Čech complex [math]\check{\mathcal C}(D)[/math] is the filtered complex of the nerves [math]\check{\mathcal C}_r(D) = \{ N(\mathcal U_r), r\in [0,\infty) \}[/math]. Thus, by the nerve theorem there exists a homotopy equivalence [math]\check{\mathcal C}_r(D) \simeq Y_r[/math] for each [math]r[/math].

For a moment assume that there exists a value [math]r[/math], such that [math]X\cap\mathcal U_r[/math] is a good open cover of [math]X[/math]. Then, at this value of [math]r[/math] the Čech complex is actually homotopy equivalent to [math]X[/math] due to the nerve theorem. This motivates the standard approach to topological data analysis, in which we assume that - generically - we are in a situation with the above assumptions holding.

However, it is not clear at which value of [math]r[/math] this situation occurs, which means that we need to consider the radius-dependent, 1-parameter family of Čech complex of [math]D[/math] as a whole. Then, the topological invariants of this filtered complex will contain characteristic properties of [math]X[/math] - encoded in their radius-dependence. The homology groups of a 1-parameter family of filtered simplicial complexes actually have the structure of a persistence module. According to the structure theorem, we can completely classify persistence modules by means of all birth and death parameters of homology classes, providing us with a useful and efficient structural description of multi-scale topological information.

Unfortunately, the situation described so far does not occur in data analysis scenarios, typically. The hypotheses of [math]X[/math] being embedded and there being a radius [math]r[/math] that admits a good open cover of the embedding of [math]X[/math] by balls with this radius are problematic. Furthermore, measurements are always endowed with uncertainties, such that the points of [math]D[/math] do not necessarily lie on the image of [math]X[/math] in [math]\mathbb{R}^n[/math].

This is where the stability theorem enters, which makes precise the following statement: a small variation of the metric results in only a small variation of the associated persistence module. Although this result does not fully invalidate the objections of the previous paragraph, it is crucial for inferring topological information of [math]X[/math] from [math]D[/math].

The Nerve Theorem

Often it is desirable to construct simplicial complexes which compute the homology of an underlying space [math]X[/math] or are strongly related to it. To rigorously guarantee for this one may look for a homotopy equivalence from [math]X[/math] to the simplicial complex. Numerous simplicial complexes exist that may be associated to [math]X[/math]. A particularly simple and in our setting useful variant will be the nerve of a covering of a topological space.

Given the nerve theorem below, which provides to us such a homotopy equivalence, the need for methods to generate coverings remains. This directly leads to the construction of different complexes such as the Čech complex or the Alpha complex. This way, the nerve theorem is a cornerstone in describing the homotopy type of a topological space via a finite point cloud sampled from it and associated simplicial complexes.

The Nerve of a Covering

Let [math]X[/math] be a topological space, and let [math]\mathcal U=\{U_i\}[/math] be any covering of [math]X[/math]. The nerve of [math]\mathcal U[/math], denoted by [math]N\mathcal U[/math], is defined as the abstract simplicial complex with vertex set [math]A[/math], and where a family [math]\{i_0,\dots, i_k\}[/math] spans a [math]k[/math]-simplex if and only if [math]U_{i_0}\cap \dots \cap U_{i_k}\neq \emptyset[/math].

The Nerve Theorem

Let [math]X[/math] be a paracompact space and [math]\mathcal U=\{U_i\}[/math] a good open cover, that is every nonempty intersection of finitely many sets in [math]\mathcal U[/math] is contractible.

Then the nerve [math]N\mathcal U[/math] is homotopy equivalent to [math]X[/math].

The Structure Theorem

Given a 1-parameter family of filtered simplicial complexes, say depending on a length scale [math]r[/math], its persistent homology groups form a persistence module. Additional information enters the stage through the parameter [math]r[/math], the description of which is elegantly captured by the structure theorem [2]. Accordingly, the structure of a barcode, that is, a multiset of possibly infinitely long intervals, may be used to describe persistent homology groups of a 1-parameter family of simplicial complexes.

Persistence Modules

Following Otter et al 2017 [3], a pair [math](\{M_i\}_{i\in I}, \{\Phi_{i,j}: M_i\to M_j\}_{i\leq j})[/math], where [math](I, \leq )[/math] is a totally ordered set, such that for each [math]i[/math], we have that [math]M_i[/math] is a vector space and the maps [math]\Phi_{i,j}[/math] are linear maps satisfying the functoriality property [math]\Phi_{k,j}\circ \Phi_{i,k} = \Phi_{i,j}[/math] for all [math]i\leq k \leq j[/math], is called a persistence module.

Persistent Homology Groups

Let [math]C_1\subset C_2\subset \dots \subset C_l=C[/math] be a filtered simplicial complex. The [math]p[/math]th persistent homology of [math]C[/math] is the pair $$(\{H_p(C_i)\}_{1\leq i \leq l} , \{f_{i,j}\}_{1\leq i\leq j \leq l}\}), $$ where for all [math]i,j\in \{1,\dots, l\}[/math] with [math]i\leq j[/math], the linear maps [math]f_{i,j}: H_p(C_i)\to H_p(C_j)[/math] are the maps induced by the inclusion maps [math]C_i\to C_j[/math].

The Structure Theorem

Let [math]C_1\subset C_2\subset \dots \subset C_l=C[/math] be a filtered simplicial complex, for example the 1-parameter family of Čech complexes, [math]\check{\mathcal C}(D)[/math], [math]D[/math] being as before a finite subset of [math]X[/math]. Then the [math]p[/math]th persistence module of homology classes of [math]C[/math] with coefficients in a field [math]k[/math] decomposes isomorphically as follows,$$H_p( C,k) \simeq \bigoplus_{i=1}^{r} I_{[b_i,d_i]} $$ where the [math]I_{[b_i,d_i]}[/math] denote the indecomposable persistence modules $$ I_{[b_i,d_i]} = \left\{ \begin{matrix} k & t\in[b_i,d_i] \\ 0 & \text{else } \end{matrix} \right. $$ and [math]\{[b_i,d_i], 1\leq i \leq r\}[/math] is a finite collection of intervals, for the example of [math]\check{\mathcal C}(D)[/math] with [math]r\leq|D|[/math].

The Stability Theorem

Stability theorems for persistence diagrams exist in multiple different fashions [4][5][6][7]. We focus here on the first such stability result obtained by Cohen-Steiner, Edelsbrunner and Harer in 2007 [5].

Stability Theorem

Let [math]X[/math] be a triangulable space with continuous tame functions [math]f,g:X\to \mathbb{R}[/math]. Then the persistence diagrams satisfy $$d_B(D(f),D(g))\leq ||f-g||_{\infty}.$$ Here, [math]D(f), D(g)[/math] specify the persistence diagrams of the filtration of sublevel sets of the functions [math]f,g[/math], respectively, [math]d_B[/math] denotes the Bottleneck distance between two persistence diagrams and [math]||f-g||_{\infty}[/math] is the supremum of [math]f-g[/math].

In words, persistence diagrams are stable under possibly irregular perturbations of small amplitude.

References

  1. CARLSSON, Gunnar. Topology and data. Bulletin of the American Mathematical Society, 2009, 46. Jg., Nr. 2, S. 255-308. doi:10.1090/S0273-0979-09-01249-X
  2. ZOMORODIAN, Afra; CARLSSON, Gunnar. Computing persistent homology. Discrete & Computational Geometry, 2005, 33. Jg., Nr. 2, S. 249-274. doi:10.1007/s00454-004-1146-y
  3. OTTER, Nina, et al. A roadmap for the computation of persistent homology. EPJ Data Science, 2017, 6. Jg., Nr. 1, S. 17. doi:10.1140/epjds/s13688-017-0109-5
  4. COHEN-STEINER, David, et al. Lipschitz functions have L p-stable persistence. Foundations of computational mathematics, 2010, 10. Jg., Nr. 2, S. 127-139.
  5. 5.0 5.1 COHEN-STEINER, David; EDELSBRUNNER, Herbert; HARER, John. Stability of persistence diagrams. Discrete & Computational Geometry, 2007, 37. Jg., Nr. 1, S. 103-120.
  6. CHAZAL, Frédéric, et al. Proximity of persistence modules and their diagrams. In: Proceedings of the twenty-fifth annual symposium on Computational geometry. ACM, 2009. S. 237-246.
  7. BAUER, Ulrich; LESNICK, Michael. Persistence Diagrams as Diagrams: A Categorification of the Stability Theorem. arXiv preprint arXiv:1610.10085, 2016.