Intelligent English teaching system based on error dispersion checking

文档序号:1650250 发布日期:2019-12-24 浏览:24次 中文

阅读说明:本技术 一种基于错误离散度检查的智能英语教学系统 (Intelligent English teaching system based on error dispersion checking ) 是由 孙博豪 于 2019-08-02 设计创作,主要内容包括:一种基于错误离散度检查的智能英语教学系统,包括:数据模块,用于记录所有试题标准答案以及错误答案;答题模块,用于学生进行试题解答;第一分解模块,用于将句子分解成单词;分析模块,用于分析第一分解模块分解句子得到的单词;第二分解模块,用于将句子分解成短语;第一识别模块,用于识别句子的语境;第二识别模块,用于识别句子语态;第三识别模块,用于进行单词识别;第一赋值模块,用于进行区别赋值;检测模块,用于检测错误状况;第二赋值模块,用于进行错误程度的赋值;分类模块,用于将错误分类;处理模块,用于根据第一赋值模块以及第二赋值模块的赋值结果计算离散值;教学模块,用于根据处理模块计算的离散值进行分类教学。(An intelligent english teaching system based on error dispersion check, includes: the data module is used for recording all the standard answers and the wrong answers of the test questions; the answer module is used for solving the test questions by the students; the first decomposition module is used for decomposing sentences into words; the analysis module is used for analyzing words obtained by the first decomposition module decomposing sentences; the second decomposition module is used for decomposing the sentence into phrases; a first recognition module for recognizing a context of a sentence; the second recognition module is used for recognizing the language state of the sentence; the third recognition module is used for carrying out word recognition; the first assignment module is used for carrying out differential assignment; a detection module to detect an error condition; the second assignment module is used for assigning the error degree; a classification module to classify the errors; the processing module is used for calculating discrete values according to the assignment results of the first assignment module and the second assignment module; and the teaching module is used for performing classified teaching according to the discrete values calculated by the processing module.)

1. An intelligent English teaching system based on error dispersion check is characterized by comprising:

the data module is used for recording all the standard answers and the wrong answers of the test questions;

the answer module is used for solving the test questions by the students;

the first decomposition module is used for decomposing sentences into words;

the analysis module is used for analyzing words obtained by decomposing sentences by the first decomposition module;

the second decomposition module is used for decomposing the sentence into phrases;

a first recognition module for recognizing a context of a sentence;

the second recognition module is used for recognizing the language state of the sentence;

the third recognition module is used for carrying out word recognition according to the sentence context recognized by the first recognition module and the language state recognized by the second recognition module;

the first assignment module is used for carrying out difference assignment according to the sentence context recognized by the first recognition module, the sentence morphism recognized by the second recognition module and the words recognized by the third recognition module;

a detection module to detect an error condition;

the second assignment module is used for assigning the error degree according to the error condition detected by the detection module;

a classification module for classifying errors according to the error conditions detected by the detection module;

the processing module is used for calculating discrete values according to the assignment results of the first assignment module and the second assignment module in the classification results of the classification module;

and the teaching module is used for performing classified teaching according to the discrete values calculated by the processing module.

2. The intelligent English teaching system based on error dispersion degree check of claim 1, wherein: the first decomposition module decomposes the sentence into a plurality of words according to intervals between words of each sentence.

3. The intelligent English teaching system based on error dispersion degree check of claim 2, wherein: the analysis module analyzes words one by one, the analysis module judges the part-of-speech range of the words according to the spelling and the form of the words, and the analysis module finally confirms the part-of-speech of the words through the parts-of-speech of the words before and after.

4. The intelligent English teaching system based on error dispersion degree check of claim 3, wherein: the second decomposition module judges the connection relation of the front word and the rear word according to the word part of speech obtained by the analysis module, and decomposes the sentence into a plurality of phrases in the form of a main phrase, a subordinate phrase, a moving phrase and a partial phrase according to the connection relation of the front word and the rear word.

5. The intelligent English teaching system based on error dispersion degree check of claim 4, wherein: due to repeated occurrences of the words in the main phrase, the verb phrase and the bias phrase, when the phrases decomposed by the second decomposition module are analyzed, all the phrases are included in the analysis range, that is, the phrases with the overlapped parts are included in the analysis range.

6. The intelligent English teaching system based on error dispersion degree check of claim 5, wherein: and the second recognition module judges the language state of the sentence according to the verb form obtained by the analysis of the analysis module and the phrase form decomposed by the second decomposition module.

7. The intelligent English teaching system based on error dispersion degree check of claim 6, wherein: when multi-sentence analysis is carried out, the first recognition module judges the context of the current sentence according to the context sentence; the first recognition module does not recognize context when performing single sentence analysis.

8. The intelligent English teaching system based on error dispersion degree check of claim 7, wherein: the first assignment module carries out primary assignment according to the sequence of the context, the semantics and the language state of the sentence in English learning respectively, the first assignment module carries out modification of sentence assignment according to the length of the word and the confusion degree of the related word, and the result is used as secondary assignment.

9. The intelligent english teaching system based on error dispersion check of claim 8, wherein: the second assignment module carries out primary assignment of the error degree according to the association degree between the word meaning of the error word and the sentence; the second assignment module carries out secondary assignment of the error degree according to the difference degree between the tense of the error word and the morpheme of the sentence; the second assignment module carries out three-time assignment of the error degree according to the context of the current sentence; the second assignment module carries out four-time assignment of the error degree according to the phrase structure; and the second assignment module calculates a final assignment result according to the first assignment, the second assignment, the third assignment and the fourth assignment.

10. The intelligent english teaching system based on error dispersion check of claim 9, wherein: when the classification module performs error classification, and when various errors occur, the classification module classifies sentences into the errors respectively according to the error conditions, namely, a single sentence can be simultaneously classified into a plurality of types.

Technical Field

The invention relates to the field of intelligent teaching, in particular to an intelligent English teaching system based on error dispersion checking.

Background

Internet education is a new education form combining internet science and technology with the education field along with the continuous development of current science and technology. The informatization technology has permeated all aspects of society, in the field of education, a subversion of informatization is occurring quietly, in the modern information society, the internet has the characteristics of high efficiency, rapidness and convenient transmission, plays an irreplaceable important role in the study and the life of middle and small students, and becomes a good helper for the middle and small students to study, which is not only beneficial to improving the ability of the middle and primary school students to study and communicate on the internet, but also helps the children to increase knowledge, widen the visual field and enlighten the intelligence, but also can more effectively stimulate the learning desire and curiosity of children, can more effectively develop good behavior habits of independent thinking and courage of students in middle and primary schools, comprehensively educate and cultivate future builders and commuters in China, has incomplete current education system, and cannot well provide good learning environment for users and guarantee learning efficiency. Meanwhile, some students cannot formulate good learning schemes and learning contents suitable for themselves according to their own conditions, which can cause the occurrence of white work.

Disclosure of Invention

The purpose of the invention is as follows:

the invention provides an intelligent English teaching system based on error dispersion check, which aims at solving the problem that the condition of idle work can be caused because some students cannot formulate good learning schemes and learning contents which are more suitable for the students according to the condition of the students.

The technical scheme is as follows:

an intelligent english teaching system based on error dispersion check, includes:

the data module is used for recording all the standard answers and the wrong answers of the test questions;

the answer module is used for solving the test questions by the students;

the first decomposition module is used for decomposing sentences into words;

the analysis module is used for analyzing words obtained by decomposing sentences by the first decomposition module;

the second decomposition module is used for decomposing the sentence into phrases;

a first recognition module for recognizing a context of a sentence;

the second recognition module is used for recognizing the language state of the sentence;

the third recognition module is used for carrying out word recognition according to the sentence context recognized by the first recognition module and the language state recognized by the second recognition module;

the first assignment module is used for carrying out difference assignment according to the sentence context recognized by the first recognition module, the sentence morphism recognized by the second recognition module and the words recognized by the third recognition module;

a detection module to detect an error condition;

the second assignment module is used for assigning the error degree according to the error condition detected by the detection module;

a classification module for classifying errors according to the error conditions detected by the detection module;

the processing module is used for calculating discrete values according to the assignment results of the first assignment module and the second assignment module in the classification results of the classification module;

and the teaching module is used for performing classified teaching according to the discrete values calculated by the processing module.

As a preferred mode of the present invention, the first decomposition module decomposes the sentence into words according to intervals between words of each sentence.

As a preferred embodiment of the present invention, the analysis module analyzes words one by one, the analysis module determines part-of-speech ranges of the words according to the spelling and form of the words, and the analysis module finally confirms the part-of-speech of the words according to the parts-of-speech of the words before and after the words.

As a preferred mode of the present invention, the second decomposition module determines a connection relationship between preceding and following words according to the part of speech of the word analyzed by the analysis module, and the second decomposition module decomposes the sentence into a plurality of phrases in the form of a main phrase, a subordinate phrase, and a partial phrase according to the connection relationship between the preceding and following words.

As a preferred mode of the present invention, since the words in the main-predicate phrase, the verb-object phrase, and the bias phrase repeatedly appear, when analyzing the phrases decomposed by the second decomposition module, all the phrases are included in the analysis range, that is, the phrases with overlapping portions are included in the analysis range.

As a preferred mode of the present invention, the second recognition module determines the language state of the sentence according to the verb form analyzed and obtained by the analysis module and the phrase form decomposed by the second decomposition module.

As a preferred mode of the present invention, when performing a multiple sentence analysis, the first recognition module determines a context of a current sentence according to a context sentence; the first recognition module does not recognize context when performing single sentence analysis.

As a preferred mode of the present invention, the first assignment module performs a first assignment according to the sequence of the context, the semantics, and the language state of the sentence in english learning, and the first assignment module performs a modification of sentence assignment according to the length of the word and the confusion degree of the related word, and the result is used as a second assignment.

As a preferred mode of the present invention, the second assignment module performs a first assignment of the degree of error according to the degree of association between the word meaning of the erroneous word and the sentence; the second assignment module carries out secondary assignment of the error degree according to the difference degree between the tense of the error word and the morpheme of the sentence; the second assignment module carries out three-time assignment of the error degree according to the context of the current sentence; the second assignment module carries out four-time assignment of the error degree according to the phrase structure; and the second assignment module calculates a final assignment result according to the first assignment, the second assignment, the third assignment and the fourth assignment.

As a preferred mode of the present invention, when a plurality of errors occur during the error classification, the classification module classifies sentences into the respective errors according to the error condition, i.e. a single sentence can be classified into a plurality of types at the same time.

The invention realizes the following beneficial effects:

according to the personalized learning scheme and the customized learning content which are embodied by students and used for the discrete degree of wrong answers obtained by knowledge, the problem that the condition of idle work can be caused because some students cannot make good learning scheme and learning content which are more suitable for the students according to the condition of the students is solved.

Drawings

The accompanying drawings, which are incorporated in and constitute a part of this specification, illustrate embodiments consistent with the present disclosure and together with the description, serve to explain the principles of the disclosure.

FIG. 1 is a system framework diagram of the present invention;

FIG. 2 is a diagram of the working steps of the present invention.

Detailed Description

The technical solutions in the embodiments of the present invention will be clearly and completely described below with reference to the drawings in the embodiments of the present invention, and it is obvious that the described embodiments are only a part of the embodiments of the present invention, and not all of the embodiments.

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