Industry characteristics analyzer with artificial behavior learning capability

A feature analysis and learning ability technology, applied in the field of intelligent information processing and big data analysis, can solve problems such as lack of progress, long cycle, unsatisfactory analysis results, etc., and achieve the effect of improving the level of analysis

Inactive Publication Date: 2016-04-20
NANJING LES INFORMATION TECH
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

2. Mining frequent itemsets
3. In terms of improving the effect, most of them are currently retraining through labeling and regularly updating the sample set, which has a long cycle and is not progressive
[0004] Because these methods are not complete alone, there are differences and shortcomings, resulting in the actual analysis results are often unsatisfactory

Method used

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  • Industry characteristics analyzer with artificial behavior learning capability
  • Industry characteristics analyzer with artificial behavior learning capability
  • Industry characteristics analyzer with artificial behavior learning capability

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Embodiment Construction

[0025] The relevant explanations of the terms used in the present invention are first introduced below, so as to make the present invention easier to understand.

[0026]

[0027]

[0028] The invention discloses an industry characteristic analyzer with the ability of artificial behavior learning, and mainly expounds its operation mechanism and realization principle.

[0029] Structurally, such as figure 1 As shown, the analyzer includes an analysis task scheduler, an analysis engine, a rule base (including a general rule base and an industry analysis rule base), a sample processing engine, and an industry characteristic sample base.

[0030] Industry characteristic sample library: contains multiple industry characteristic samples, which are stored separately by industry. The samples of each industry are divided into unclassified sample sets and classified sample sets. It can be dynamically expanded and adjusted. Classified samples refer to samples that are grouped acc...

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Abstract

The invention discloses an industry characteristics analyzer with an artificial behavior learning capability, pertaining to the technical field of intelligent information processing technology and big data analyses. The industry characteristics analyzer comprises a dynamically-supplemented industry characteristics sample library. The analyzer is used for extracting industry rules out of two samples in a concentrated mode in the industry characteristics sample library according to the certain strategy in order to form an industry analysis rule library. When receiving analysis tasks, an analysis engine is used for analyzing inputted unknown characteristics tests according to the industry analysis rule library, adjusting analysis results, recognizing characteristics and achieving learning capability.

Description

technical field [0001] The invention relates to the technical field of intelligent information processing and the technical field of big data analysis. Background technique [0002] The knowledge of an industry (field) is complex and polymorphic. Extracting knowledge from industry data and using computers as the basis for analysis requires related technologies: data mining, feature recognition, and learning improvement. Data mining: Currently, there are various technologies and methods used in data mining, but each technology has its shortcomings, and different methods need to be used for samples with different characteristics. Feature recognition: The computer performs feature labeling (or classification) on the input information according to the given feature classification system, and the recognition level depends on the quality and quantity of samples (training effect). Learning improvement: Use new data to continuously reorganize and improve your own identification (cl...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30
CPCG06F16/35G06F16/355G06F16/38
Inventor 张秋涵吴小铭金定勇饶慧
Owner NANJING LES INFORMATION TECH
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