2. Definition and Properties
We start by repeating some basic definitions.
Let  be a probability space, and let  be a filtration of sub--algebras of  satisfying the usual conditions:
Given a measure  on , we say that  if  implies  for . Similarly,  is defined analogously. If both  and , we say that  and  are equivalent, and we write .
A set 
 is called evanescent if
      is a 
-null set. Here, we always consider stochastic processes as modulo evanescent sets.
A càdlàg function is a mapping  that is right continuous and has left-hand limits at every point. From this point forward, we assume that all stochastic processes are càdlàg (at least up to evanescence).
For a càdlàg process X, the jump process  is defined as  with , and, for a stochastic process Y, the process  is defined to be the process Z that satisfies . Hence, one obtains .
A sequence of processes 
 converges to a process 
H uniformly on compacts in probability (abbreviated to ucp) if, for each 
,
A càdlàg, adapted process  is called a semimartingale if it can be decomposed as , where M is a local martingale and A is a process of finite variation on every finite interval. The space of d-dimensional semimartingales is denoted by .
Beyond this decomposition, semimartingales can also be defined equivalently through their properties as good integrators. In this sense, a semimartingale is a process for which the integral operator is continuous with respect to certain metrics. Finally, semimartingales can also be described as topological semimartingales, whose definition relies on certain convergence properties in the semimartingale topology (see, for example, [
8]). These three characterizations—the classical decomposition, the good integrator perspective, and the topological semimartingale framework—are mathematically equivalent.
For a stochastic process 
X and a stopping time 
T, the stopped process 
 is defined as 
 for all 
. It is well known that, if 
X is a martingale and 
T is a stopping time, then the stopped process 
 remains a martingale (see 
Corollary A1). For a stochastic process 
X and a stopping time 
T, the stopped process 
 is defined as 
 for all 
. It is well known that, if 
X is a martingale and 
T is a stopping time, then the stopped process 
 remains a martingale (see 
Corollary A1).
The predictable 
-algebra, denoted by 
, is the smallest 
-algebra on 
 such that all left-continuous adapted processes are measurable with respect to 
, the Borel 
-algebra on 
. This definition is equivalent to several other characterizations of the predictable 
-algebra on 
. For example, the predictable 
-algebra can also be generated by simple or elementary predictable processes, continuous adapted processes, or sets of predictable stopping times (see the results in ([
9], Section 7.2)).
By , we denote the space of d-dimensional martingales, by  the space of bounded d-dimensional martingales, and by  the space of d-dimensional local martingales. A subscript 0, as in , further indicates that the process starts at 0, that is,  almost surely for all .
In the following, we use 
 to denote the stochastic integral of a 
d-dimensional predictable process 
H with respect to a 
d-dimensional semimartingale 
X, as defined, for example, in [
9].
For a martingale 
M and 
, write
Here, 
 denotes the norm in 
. Then, 
 is the space of martingales such that
There are several equivalent definitions of 
-martingales in the literature. The definition adopted in this work was originally proposed by Goll et al. [
10] and later refined by other authors (e.g., ([
5], Definition III.6.33)). This definition emphasizes how 
-martingales extend local martingales through a broader localization framework. In contrast, works such as [
1,
4] define 
-martingales as processes that can be represented as stochastic integrals with respect to martingales. While this perspective underscores their crucial role in mathematical finance, it makes the connection to their generalization of local martingales less immediately apparent. From a didactic perspective, we find that the earlier definition—adopted here—provides a clearer and more intuitive introduction to the concept. In Theorem 3, we establish the equivalence of our definition with that of [
1,
4], naturally concluding that 
-martingales hold significant importance in the study of mathematical finance.
Definition 1 (-martingale). A one-dimensional semimartingale S is called a σ-martingale if there exists a sequence of sets  such that
- (i) 
-  for all n; 
- (ii) 
- ; 
- (iii) 
- For any , the process  is a uniformly integrable martingale. 
Such a sequence  is called a σ-localizing sequence. A d-dimensional semimartingale is called a σ-martingale if each of its components is a one-dimensional σ-martingale. By , we denote the set of all d-dimensional σ-martingales.
 First, observe that, by setting , all local martingales are -martingales.
Theorem 1. Every local martingale is a σ-martingale.
 Proof.  Let M be a local martingale and  a localizing sequence. Define . Since , it follows that M is also a -martingale.    □
 In discrete time, any 
-martingale is a local martingale. This follows from the fact that, in discrete time, any predictable set 
 can be expressed as a finite union of intervals of the form 
, combined with the property that the set of local martingales forms a vector space. Alternatively, this result can also be derived using Theorem 3 and the observation that, in discrete time, the predictable integrand can be assumed to be locally bounded. The conclusion then follows directly from results such as ([
9], Theorem 12.3.3), which states that a stochastic integral with a locally bounded integrand and a local martingale integrator is again a local martingale, or ([
11], Theorem 10.7), which states that, in discrete time, any stochastic integral with a bounded integrand and a martingale integrator is again a martingale.
It turns out that 
, as we will illustrate in the following example, which can also be found in ([
5], Example 6.40). We revisit the example with a detailed demonstration and elaboration on the claimed properties.
Example 1. Let  be a sequence of independent random variables with Then, X is a well-defined σ-martingale but no local martingale with respect to the filtration created by X.
First, we have to show that X is well defined. Therefore, we define . Clearly, we have  and hence . By the Borel–Cantelli lemma, we conclude that  and thus X is well defined.
By settingwe obtain  for each n. Since the sum is finite and all  are symmetric and integrable, it is easy to see that  is a localizing sequence and X a σ-martingale. Furthermore, X is not a local martingale. In order to show that, we assume that . Since X is a process with independent increments, we even have  (see, for example, (Medvegyev [12] Theorem 7.97)). We putand, by the independence of the random variables , we obtainwith  (We note that c is well defined, since  converges.) By applying monotone convergence, and since the sets  are pairwise disjoint, we obtain This is a contradiction, and we conclude that X is not a local martingale.
 The following example is a variant of the most prominent example for a 
-martingale that is not a local martingale. It is from Émery [
3] and mentioned in most publications about 
-martingales (see, for example, ([
13], Example 9.29), ([
4], the example preceding Theorem IV.34), or ([
14], Example 5.2)).
Example 2. Let  be independent random variables with  and . We put  Then, X is a σ-martingale but not a local martingale with respect to the filtration created by X.
By putting , we obtain And it is easy to see that  is a localizing sequence.
However, X is not a local martingale as we encounter integrability problems. We assume , and hence there exists a stopping time  such that  is a uniformly integrable martingale.
Since X is constant on , we deduce that T is constant on . There exists an  such that  on . Hence, we have  and thus So  is not a martingale, and thus X is not a local martingale.
 Remark 1. It turns out that, for both of the above examples, there exists an equivalent probability measure  such that X is a -martingale.
For the first example, assume a probability measure  such that  are independent random variables with Furthermore, it is easy to see that we have . Hence, X is a martingale.
The equivalence of the original probability measure  and  can be seen by constructing the Radon–Nikodym derivative. For each , the laws of  under  and  are mutually absolutely continuous. In fact, definingthe overall Radon–Nikodym derivative is given by Since, by the Borel–Cantelli lemma, only finitely many of the events  occur -almost surely, the infinite product involves only finitely many factors differing from 1, and hence converges to a strictly positive random variable. This shows that  is well defined and strictly positive -almost surely, implying that  and  are equivalent.
(Alternatively, one could verify the equivalence by applying Kakutani’s theorem.)
For the second example, assume a probability measure  such that τ and ξ are independent random variables and  for all  and  (for example, you can choose  with  for all ). Then, we have  and  and hence X is a martingale.
However, in general, such a probability measure does not necessarily exist. We will illustrate that in Example 4.
 In the definition of -martingales, we refer to the localizing sequence  as a -localizing sequence.
To establish properties of -martingales, we prefer to work with a definition that is relatively “strong”. However, when proving that a given process is a -martingale, it is more convenient to use criteria that appear “weak” or less restrictive but are nonetheless equivalent to the definition of -martingales.
We achieve this by potentially relaxing the conditions that the sequence  must satisfy for a -martingale S. Consequently, we extend the notion of a -localizing sequence.
Definition 2. A sequence of sets  is called a Σ-localizing sequence if
- (i) 
-  for all n; 
- (ii) 
- ; 
- (iii) 
- For any , the process  is a local martingale. 
 The notion of the 
– (or 
–) localizing sequence is new in the literature but is inspired by the procedure of 
-localization, which was first described by Jacod and Shiryaev [
5] and Kallsen [
6]. It does simplify some proofs since the following theorem holds:
Theorem 2. Let S be a semimartingale. The following are equivalent:
- (i) 
- The process S is a σ-martingale; 
- (ii) 
- For S, there exists a σ-localizing sequence; 
- (iii) 
- For S, there exists a Σ-localizing sequence; 
- (iv) 
- For S, there exists a sequence , such that  and , and, for any , the process  is a σ-martingale. 
 In order to prove this theorem, we need the following lemma:
Lemma 1. Let  and  sets, which form a countable partition of , such that  is a uniformly integrable martingale for any . Then, S is a σ-martingale.
 Proof.  We put  Then, it is easy to see that  is a -localizing sequence.    □
 Proof of Theorem 2.  It suffices to prove that the theorem for .  is clear, so we just have to show .
Let S be a semimartingale, for which a sequence  of subsets of the predictable -algebra exists such that  and  and for which  is a -martingale for any .
By assumption, for every 
, there exists a sequence 
, such that
        is a uniformly integrable martingale for all 
m. By defining 
, we obtain 
, and
        is a local martingale because stochastic integrals with bounded integrands and local martingale integrators are again local martingales. Thus, for every pair 
, there exists a fundamental sequence 
. We put
        for 
 and all 
. Now
        is a uniformly integrable martingale and so is
The sets  are subsets of the predictable -algebra and form a countable partition of . Thus, by Lemma 1, S is a -martingale.    □
 The following corollary is immediate.
Corollary 1. Every local σ-martingale X is a σ-martingale.
 The following result shows that the set of -martingales is closed under stochastic integration, as opposed to the set of local martingales.
Corollary 2. Let  and . Then,  is also a σ-martingale.
 Proof.  Let  be the components of S. Consider a -localizing sequence  and define 
Since 
H is a predictable process, all of the 
 lie in the predictable 
-algebra. Therefore, the sets 
 are predictable and we have 
 and 
. By putting 
 and 
, the process 
 is bounded, and, by the linearity of the integral, we obtain
Hence, since  is a local martingale,  is also a local martingale and thus  a -localizing sequence. By Theorem 2,  is a -martingale.    □
 Corollary 3. For a σ-martingale S with Σ-localizing sequence  and a sequence of subsets of the predictable σ-algebra , which satisfies  and ,  is also a Σ-localizing sequence.
 Proof.  Since  is a -localizing sequence,  is, by definition, a local martingale, and, since  is bounded,  is a local martingale for all n and  is a -localizing sequence.    □
 Corollary 4. The set of σ-martingales forms a vector space.
 Proof.  Without loss of generality, we assume 
. Consider 
 and 
 with 
-localizing sequences 
 for 
X and 
 for 
Y. By Corollary 3, 
 is a 
-localizing sequence for both 
X and 
Y and we have
Since  is a vector space,  is a local martingale and thus  is a -localizing sequence for . Hence,  is a -martingale.    □
 We now come to one of the main statements about 
-martingales. As mentioned earlier, 
 for 
 is not necessarily a local martingale. Hence, we have a closer look at the class
      and it turns out that this class corresponds exactly to the vector space of the 
-martingales. Furthermore, by proving this theorem, we also show that our definition of a 
-martingale is equivalent to the definition used in [
1,
4].
The theorem is mentioned in almost every publication about 
-martingales (for example, in ([
4], Theorem IV.Theorem 89) or ([
5], Theorem 6.4.1)). Because of our different approach, the proof given here differs slightly from the one given in the above-mentioned literature.
Theorem 3. Let  be a d-dimensional semimartingale. The following are equivalent:
- (i) 
- The process X is a σ-martingale. 
- (ii) 
- There exists a strictly positive process  and an -martingale  with 
- (iii) 
- There exists a strictly positive process  and a martingale  with 
- (iv) 
- There exists a strictly positive process  and a local martingale  with 
- (v) 
- There exists a local martingale  and a predictable process  with 
 Proof.  The implications  are clear.
 By assumption, there exists a 
-localizing sequence 
. By 
Theorem A4, each martingale is locally in 
. Hence, for each 
 and each 
, there exists an increasing sequence of stopping times 
 tending to infinity, such that 
. Therefore, we can construct a sequence 
 of stopping times, such that 
 for all 
 and all 
.
We choose appropriate 
 such that
        and put 
 as well as
Because of
 is the limit of a sequence of 
-martingales which is convergent in 
. Since, by 
Lemma A1, 
 is a Banach space, 
N is also an 
-martingale. Furthermore, we have 
 and hence 
 exists and we obtain 
 for all 
. As every martingale is locally in 
, for each 
i, there exists an increasing sequence of stopping times 
 tending to infinity, such that 
. Hence, we can construct an increasing sequence of stopping times 
 tending to infinity, such that 
 for all 
 and for all 
 We define
        and hence, we have
Because of 
 and because the process 
, stopped at 
, is an 
-martingale, 
 is for all 
n a local martingale, as a stochastic integral with a locally bounded integrand and a local martingale integrator is again a local martingale by 
Theorem A5. Therefore, there exists a 
-localizing sequence for 
X, and thus 
X is a 
-martingale.    □
 The following lemma is a simple yet useful result about general stochastic integration. To the best of our knowledge, it has only been explicitly mentioned in the unpublished work [
8]. Alternatively, it can be derived as a corollary from [
15], although the latter uses a different approach and slightly different terminology. Since this result is helpful for our purposes, we provide a proof here.
Lemma 2. Let  be a sequence of local martingales, which converges to a process X in ucp. If  is locally integrable, then X is a local martingale.
 Proof.  Without loss of generality, we assume all processes to be one dimensional. Because of the ucp convergence, we can conclude that 
X is also càdlàg and adapted. By assuming a suitable subsequence, we can, with 
Theorem A1, also assume that the convergence is almost surely on compact subsets, and thus
        is also càdlàg and adapted. Furthermore, 
 is increasing, and we have
By assumption, the right-hand side is locally integrable; thus, M is also locally integrable.
We now want to show that 
X is a local martingale. In order to prove that, we have to find a sequence 
 such that 
 is a martingale for all 
k. For that, it suffices to show that, for every stopping time 
, we have 
 by the martingale criterion 
Theorem A3.
First, note that we can find a sequence 
 such that 
 is a martingale for all 
n and 
k and 
 is integrable for all 
k. And, because of 
, we can apply the dominated convergence theorem and obtain with 
Corollary A1 for every bounded stopping time 
Hence,  is a martingale for all k; thus, we conclude that X is a local martingale.    □
 -martingales are processes that behave “like” local martingales. It can even be shown that 
-martingales are semimartingales with vanishing drift ([
6], Lemma 2.1). It therefore raises the questions of why they are not local martingales and what additional assumption must be made so that they are. We have a criterion available with Lemma 2, which allows us to prove the following simple criterion for this question. Despite this simplicity, to the best of our knowledge, it is not explicitly mentioned in the 
-martingale literature. However, it will be enormously helpful for this new approach.
Theorem 4. A σ-martingale X is a local martingale if and only if it is locally integrable.
 Proof.  Since every local martingale is a -martingale and locally integrable, it is enough to prove the converse.
Let 
X be, without loss of generality, a locally integrable one-dimensional 
-martingale. By Theorem 3, there exists a representation 
 with 
 and 
. We define 
. Clearly, we have 
 and 
 is a bounded predictable process. We obtain
Since each 
 is bounded for all 
n, we apply 
Theorem A5 and obtain 
 for all 
, and, with the Dominated Convergence Theorem, we obtain 
. Choosing a subsequence, we can assume by 
Theorem A1 that 
 converges almost surely on compact subsets.
We put  and N is an adapted càdlàg process. Since  is left continuous and hence locally bounded, it is also locally integrable. Since  is locally integrable by assumption,  is also locally integrable.
Hence,  and therefore also  are locally integrable. Since any càdlàg process is locally integrable if its jump process is locally integrable,  and thus  are also locally integrable. Now the result follows from Lemma 2.    □
 As every continuous semimartingale is locally integrable, the following corollary is immediate:
Corollary 5. Every continuous σ-martingale is a local martingale.
 Remark 2. As opposed to the criterion above, it is well known that any σ-martingale that is also a special semimartingale (see, for example, ([9], Definition 11.6.9) for the definition of a special semimartingale) is a local martingale (([9], Corollary 12.3.20) or ([4], Theorem IV.91)) and it can be shown that a semimartingale is a special semimartingale if and only if its supremum process is locally integrable (see, for example, ([9], Theorem 11.6.10) or ([16], Theorem 8.6)). Hence, we obtain that a local martingale is locally integrable if and only if its supremum process is locally integrable.  The following theorem is of principal importance in financial mathematics. It can be found in many publications on financial mathematics using the semimartingale terminology (not only is it mentioned in almost all of the publications we mentioned frequently in this work, such as [
1,
14,
17,
18], but it also mentioned in many textbooks dealing with the different aspects of financial mathematics such as [
19,
20,
21,
22]). However, to our knowledge, the only published proofs are the French-language original publication [
23], Corollaire 3.5, and the more recent [
24]. Theorem 4 enables us to give an alternative proof.
Theorem 5 (Ansel–Stricker). A one-sided bounded σ-martingale X is a local martingale. If X is bounded from below (resp. above), it is also a supermartingale (resp. submartingale).
 Proof.  Assume, without loss of generality,  and X to be one dimensional. By Theorem 3, there exists a representation  with  and .
Proceeding analogously to the proof of Theorem 4, we find a sequence  of locally bounded predictable processes from  such that . Furthermore, we can assume that  and  almost surely on compact sets (we can always find a modification of a subsequence for which these properties hold). Since the  are locally bounded,  is a local martingale for all n. Hence, we can find a sequence of stopping times , such that  is a martingale for all .
By Fatou’s lemma, we know that
Hence,  is integrable and X locally integrable. By Theorem 4, it follows that .
We still have to show the supermartingale property. Therefore, still assuming 
, let 
, 
, and let 
 be the localizing times chosen above. Observe that, for any 
 with 
,
        where the last equality holds since on 
, we indeed have 
. (The case 
 is even simpler to handle, as then the difference is 
.) Hence,
Thus, 
 is non-negative and, by local integrability of 
X, we can again use Fatou’s lemma as 
. In the limit, we obtain
Hence, , which is precisely the supermartingale property. (In the case X is instead bounded above by 0, a symmetric argument shows that X is a submartingale.)    □
 In finite, discrete time, any non-negative local martingale that is bounded from below is a martingale and not just a supermartingale. The difference in continuous time is that  for all t does not imply  (not even on compacts). Thus, there is no integrable pointwise majorant which would be needed to prove the martingale property.
Remark 3. There are three other approaches to proving the Ansel–Stricker lemma in the literature.
The original proof by Ansel and Stricker [23]: This approach relies on the classification and control of jumps and the theory of special semimartingales. It involves intricate technical calculations and constructs a sequence that converges to the integral , ensuring that this sequence is bounded from below by integrable random variables. The proof by De Donno and Pratelli (2007) [24]: This method categorizes jumps into positive and negative components to manage the stochastic integral’s behavior. It leverages Fatou’s lemma and Lebesgue’s Theorem to control approximation sequences, thereby circumventing the complexities associated with special semimartingales. The proof by Gushchin (2015) [7]: Here, the lemma by Ansel–Stricker appears as a corollary, a more general result that is very close to Theorem 6. This approach relies extensively on the theory of special semimartingales, utilizing their structural properties to establish the result.  As mentioned earlier, the Ansel–Stricker lemma is widely referenced in the literature on mathematical finance, particularly in the context of semimartingale models. However, our proof shows that with minimal additional effort, the result can be further generalized. This generalization is crucial for the analysis of general semimartingale market models. Surprisingly, this result does not seem to be widely known. To the best of our knowledge, only in ([
7], Theorem 3.21), is a similar result mentioned.
Theorem 6. Let X be a (one-dimensional) σ-martingale. The following statements are equivalent:
- (i) 
- X is a local martingale. 
- (ii) 
- There exists a local martingale M and a càdlàg process of locally integrable variation A such that 
- (iii) 
- There exists a local martingale M and a càdlàg process A with  locally integrable, such that 
- (iv) 
- There exists a local martingale M and a càdlàg process of locally integrable variation A such that 
- (v) 
- There exists a local martingale M and a càdlàg process A with  locally integrable, such that 
 Proof.  . If X is a local martingale, then one may choose  and ; hence, all the asserted inequalities are satisfied trivially.
. Assume 
, i.e., there exists a local martingale 
M and a càdlàg process 
A with 
 locally integrable such that
Since the family of local martingales is a vector space, 
X is a local martingale if and only if the difference
        is a local martingale. In view of the inequality, we may, without loss of generality, assume that
Then, one may follow the strategy used in the proof of Theorem 5 (the Ansel–Stricker result): Represent 
X as a stochastic integral 
 (with predictable 
H and a local 
 martingale 
N) and approximate 
H by a sequence 
 of bounded predictable processes so that the stochastic integrals 
 are local martingales. Using the generalized Fatou’s Lemma (
Theorem A2) to pass to the limit shows that 
X is locally integrable and hence a local martingale.
. We have 
 for some local martingale 
M and a càdlàg 
A with locally integrable supremum. Set
Since  is a left-continuous (càglàd) adapted process,  is locally integrable, and so is . Hence, Y serves as an integrable lower bound. Repeating the Fatou-type limit argument from the  case shows that X is locally integrable and therefore a local martingale.    □
 As mentioned above, Theorem 6 is not commonly mentioned in the mathematical finance literature. Nevertheless, it turns out to be essential for defining a general semimartingale market model.
Example 3. Consider a financial market consisting of  assets, whose prices are modeled by the -dimensional semimartingale A trading strategy is represented by a -dimensional predictable processmeaning that φ is integrable with respect to S. The investor’s wealth process is given byand, under the self-financing condition (i.e., no capital inflows or outflows, all gains are reinvested, and losses are not compensated), we have In many such markets, riskless profits can be obtained via the popular doubling strategy. However, such a strategy requires an infinite line of credit, which is unrealistic. Consequently, a trading strategy is typically deemed admissible if the wealth process satisfiesfor some constant α. Since it is not sufficient to consider only nominal values, one introduces a numeraire—namely, a strictly positive semimartingale N satisfying Let us assume  is a numeraire, and let us consider the discounted price process Then, the First Fundamental Theorem of Asset Pricing [1] asserts that, under an appropriate no-arbitrage condition, there exists an equivalent probability measure  such that  is a d-dimensional σ-martingale. For the analysis of the financial market, it is desirable to conclude that the discounted wealth processis a local martingale rather than merely a σ-martingale. The Ansel–Stricker lemma guarantees that a one-sided bounded σ-martingale is a local martingale. Although this lemma would apply directly if  were bounded from below, in practice, we only assume that the original wealth process V is bounded from below—not necessarily the discounted wealth . However, sinceand because  is a numeraire (so that  serves as an integrable lower bound), we can use Theorem 6 to conclude that  is a local martingale.  To conclude the study about 
-martingales, let us illustrate that there are 
-martingales where no equivalent probability measure exists under which it is a local martingale. The example is inspired by ([
1], Example 2.3) and ([
14], Example 5.3).
Example 4. Assume a two-dimensional σ-martingale , with X being the process from Example 2 and Let  be the σ-algebra created by τ and ξ (from Example 2) and, furthermore, let  be the σ-algebra created by . We examine the processes with respect to the according filtered probability space. Obviously, Y is a stopped compensated Poisson Process. As the compensated Poisson Process is a martingale (see, for example, ([9], Theorem 5.5.18)) and a stopped martingale is again a martingale by the Optional Stopping Theorem, Y is also a martingale. Hence, Z is a σ-martingale that is not a local martingale, and we are going to show that no probability measure  exists such that Z is a local martingale under . To that end, let  be an equivalent probability such that Y is a σ-martingale under . For each , the stopped process  is bounded and since, by Theorem 5, any bounded σ-martingale is a martingale, we conclude that  is a martingale. Thus, we have  for all . With f being the density function of τ under  and F being the cumulative distribution function of τ (that means ), we obtain We derive with respect to t and obtain  By putting , we obtain  and . Thus, Hence, we obtain  and thus Now, we turn to X. Our first goal is to show that we have  or, equivalently,  for all . We proceed in a sequence of steps.
- 1. 
- We have . - For any , we define  where . Then,  is clearly a σ-martingale. Furthermore, we have - And, since  for  and , we conclude that  is a bounded σ-martingale for all . Hence, by Theorem 5, it is a martingale and we obtain 
- 2. 
- We have  for all . - Let . Then, we have  and we obtain - As  is not constantly zero, we conclude that . 
- 3. 
- We have  for all . - By definition, we have . Both summands can be seen as measures on Ω, and, since the half-open intervals are an ∩-closed generator of the Borel σ-algebra (see, for example, ([25], Theorem 1.23)), these measures are uniquely determined by its values on  (see, for example, ([25], Lemma 1.42)) and we conclude that  for all  and hence 
Since  and  are equivalent probability measures, we have Thus, with (1), we obtainalmost surely and hence ξ and τ are  independent. We conclude that .