| Literature DB >> 33267153 |
Rui She1, Shanyun Liu1, Pingyi Fan1.
Abstract
Different probabilities of events attract different attention in many scenarios such as anomaly detection and security systems. To characterize the events' importance from a probabilistic perspective, the message importance measure (MIM) is proposed as a kind of semantics analysis tool. Similar to Shannon entropy, the MIM has its special function in information representation, in which the parameter of MIM plays a vital role. Actually, the parameter dominates the properties of MIM, based on which the MIM has three work regions where this measure can be used flexibly for different goals. When the parameter is positive but not large enough, the MIM not only provides a new viewpoint for information processing but also has some similarities with Shannon entropy in the information compression and transmission. In this regard, this paper first constructs a system model with message importance measure and proposes the message importance loss to enrich the information processing strategies. Moreover, the message importance loss capacity is proposed to measure the information importance harvest in a transmission. Furthermore, the message importance distortion function is discussed to give an upper bound of information compression based on the MIM. Additionally, the bitrate transmission constrained by the message importance loss is investigated to broaden the scope for Shannon information theory.Entities:
Keywords: information theory; message importance measure; message transmission and compression; probabilistic events processing
Year: 2019 PMID: 33267153 PMCID: PMC7514929 DOI: 10.3390/e21050439
Source DB: PubMed Journal: Entropy (Basel) ISSN: 1099-4300 Impact factor: 2.524
Figure 1Information processing system model.
Notations.
| Notation | Description |
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| The discrete probability distribution with respect to the variable | |
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| The message source in the information processing system model |
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| The mapped or compressed message with respect to the |
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| The received message transferred from the |
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| The recovered message with respect to the |
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| The importance coefficient |
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| The message importance measure (MIM) described as Definition 1 |
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| The Shannon entropy, |
| or | |
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| The Renyi entropy with the parameter |
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| The CMIM described as Definition 2 |
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| The conditional Shannon entropy, |
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| The message importance loss described as Definition 3 |
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| the message importance loss capacity (MILC) described as Definition 4 |
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| An information transfer matrix from the variable |
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| An information transfer process from the variable |
| The parameters in the binary symmetric matrix, binary eraser matrix and | |
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| k-ary symmetric matrix respectively |
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| The distortion function, |
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| The allowable distortion ( |
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| The average distortion, |
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| The the allowable information transfer matrix set |
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| The message importance distortion function described as Definition 5 |
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| Mutual information, |
Figure 2The performance of message importance loss and MILC (mentioned in Definition 4) in the Binary symmetric matrix. (a) the performance of message importance loss (with ) versus probability p in the cases of different symmetric matrix parameter (); (b) the performance of MILC versus matrix parameter in the cases of different parameter .
Figure 3The performance of message importance loss and MILC in the Binary erasure matrix. (a) the performance of message importance loss (with ) versus probability p in the cases of different matrix parameter (); (b) the performance of MILC versus erasure matrix parameter in the cases of different parameter .
Figure 4The performance of MILC in strongly symmetric matrix with .
Figure 5The performance of message importance distortion function in the case of Bernoulli(p) source ().
Figure 6The performance of mutual information constrained by the message importance loss (the parameter ). (a) the performance of versus in the binary symmetric matrix; (b) the performance of versus in the erasure matrix.
Figure 7The message importance loss (with parameter ) versus the probability p of Bernoulli(p) source with number of samples N (). There are two different transfer matrices, namely the symmetric matrix with parameter and the erasure matrix with parameter .
Figure 8The message importance loss (with parameter ) versus allowable distortion D (the corresponding distortion function is Hamming distortion) in the case of different transfer matrices. The information source X follows Bernoulli(p) distribution (where , namely ) and the number of samples is .
Figure 9The mutual information versus the rare message importance loss threshold (the parameter ) in the case of Bernoulli(p) source X (that is with different probability p). The number of samples observed from the source X is , and transfer matrix is the symmetric matrix with parameter or the erasure matrix with parameter .