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2444-8656
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Research on the application of GLE teaching mode in English-medium colleges

Published Online: 30 Nov 2022
Volume & Issue: AHEAD OF PRINT
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Received: 06 Jun 2022
Accepted: 07 Aug 2022
Journal Details
License
Format
Journal
eISSN
2444-8656
First Published
01 Jan 2016
Publication timeframe
2 times per year
Languages
English
Introduction

With the further development of science and technology [1], under the background of the information age [2], from the perspective of the current situation of education, the content of teaching in English-medium colleges [3] is mixed. Most of the learning during school is for grades, and many students do not have the ability to learn independently [4]. At present, the main purpose of educational reform [5] is to teach students to learn and regard it as one of the highest goals of educational pursuit [6]. The promulgation and implementation of some laws and regulations is to make students’ learning play a substantial role [7] and advocate independent, exploratory and cooperative learning methods [8, 9]. Especially in teaching how to read English [10], as English is the universal language in the world, reading [11] is considered a basic skill. It is not only the main way for students to get in touch with foreign languages [12], but it is also a way for students to master language knowledge [13], the basis for acquiring information and improving language ability [14]. Therefore, reading in English-medium college is an important means to cultivate high-quality talent exchanges [15] and enhance international competitiveness [16].

Literatures [17] and [18], based on descriptive research, propose schema theory as an effective learning process to improve students’ reading ability and improve their reading ability. Literature [19] proposes the exploration of the teaching mode in English-medium colleges under the network teaching mode. Yuxuan [20] examines reading comprehension strategies and interactive vocabulary to improve students’ reading ability, adding to research on designing and using digital texts for different learners. Xiaoling and Xiaomin [21] established a teaching model based on the independence and dependence of students’ learning. Jing [22] proposed a new mode of reading in English-medium colleges under the network collaborative learning (CL) mode, aiming to build a good learning environment for students. Zhang and Hung [23] studies the characteristics of students’ learning, procedures and task design and conducts written tests, oral tests and interviews on the collected data. Based on the feasibility of task-based teaching applied to large-scale language teaching, it reveals the practicality of task-based teaching. Barnard and Nguyen [24], aiming at the task-based teaching model, aims to explore teachers’ understanding of educational reform in their specific context and introduces and establishes a ‘narrative’ framework based on teachers’ knowledge and attitudes, that is, teachers are required to self-evaluate their teaching. Lian et al. [25] collects opinions on authentic language learning, self-directed learning, CL and English self-efficacy and constructs a structural equation model to facilitate online learning of language learners. The process is better understood. Foreign scholars Yelland and others conducted research on scaffolding teaching in the context of the internet in 2007. They believe that teachers build scaffolding for students in the network environment, which enriches the types of scaffolding activities, enhances students’ interest in learning and obtains a sense of learning achievement. Wallace pointed out in the 1990s that the English reading strategy is that in the process of reading, where learners ‘can selectively use certain reading methods according to different chapter types, content and reading purposes’. In the same year, Johnson et al. believed that reading strategies in English are ‘behavioural processes taken by learners to solve difficulties in reading’. It includes not only some skills in reading but also the selective and controlled behaviour that readers take to achieve the intended reading purpose. In 2017, domestic scholar Wang Xiangyi combined the internet with scaffolding teaching and applied it to English teaching. Research shows that internet-based scaffolding teaching can help improve students’ learning interest and performance.

The previous article summarises the research of domestic and foreign scholars. Most of these research results have contributed to the research of teaching of how to read in English in colleges. However, with the development of the times, teaching how to read English is not limited to the research results of predecessors. The research methods in the early years could not fully stimulate the interest of college students in learning English and mobilise the enthusiasm of autonomous learning. Therefore, this paper proposes a teaching method of reading English in colleges based on the GLE teaching model and integrates the GLE teaching model in colleges which teach how to read English, which can not only fully mobilise the enthusiasm of college students for reading English, improving performance of reading English, but also reduce the relative learning relative. The error also has obvious effects. The research in this paper is of great significance for the related research in the same field in the future.

Overview of the GLE teaching mode

The core of the GLE teaching model lies in the design of each link problem. The subject of education must have levels and progressions when designing problems, so as to achieve the teaching objectives of each link and obtain the best teaching effect. The teaching mode is shown in Figure 1.

Fig. 1

Overview of the GLE teaching mode

Figure 1 shows that the teaching mode of GLE first carefully introduces the content in English by guiding the preview, creating a situation and combining guidance and release, and guides students to enter the content of English reading; secondly, through listening training, cooperative grouping and follow-up imitation, etc., it improves students’ overall perception of English reading content and promotes the resolution of doubts in the classroom; through subject integration, cooperation and communication between groups and comments on classroom content, the sublimation of teachers’ guidance in the classroom is completed; finally, through the creation of language environment, the content of the class is summarised and classwork is assigned, etc. to achieve the extension of the English reading class and the summary of the class content.

Construction of GLE the teaching model
Quadratic programming method to estimate state transition probability matrix

The probability of the Pij system from state Ei to another state through one transition is recorded as Ej, also known as moment. P is a transition matrix called P(k)k; the secondary transition matrix is written as follows: p=[p11p12p1np21p22p2npn1pn2pnn] p = \left[{\matrix{{{p_{11}}} & {{p_{12}}} & \cdots & {{p_{1n}}} \cr {{p_{21}}} & {{p_{22}}} & \cdots & {{p_{2n}}} \cr \vdots & \vdots & {} & \vdots \cr {{p_{n1}}} & {{p_{n2}}} & \cdots & {{p_{nn}}} \cr}} \right]

The state transition matrix must be a probability matrix; so, the following conditions need to be met:

In the matrix, each element Pij is a non-negative number, that is, Pij0,i=1,2,,n;j=1,2,,n {P_{ij}}0,\quad i = 1,2, \cdots,n;\quad j = 1,2, \cdots,n

The addition of elements in each row of the matrix is equal to 1, that is, i,j=1npij=1 \sum\limits_{i,j = 1}^n {p_{ij}} = 1

After a period of time, the k Markov chain tends to be stable after the state undergoes a sufficiently large sub-transition, and the stable state of the system can be obtained by the transition probability matrix.

In order to determine the primary transition matrix of the English teaching model, the probability of the relative state changes that of the stationary, increasing and decreasing English learning scale from 2012 to 2018 should be assumed first. Set the rate of change as follows: c=(NiNi1)/Ni c = \left({{N_i} - {N_{i - 1}}} \right)/{N_i} where Ni is the number of students in the current year and Ni−1 is the number of students the previous year. If c ∈ [−0.1,0.1], the state is defined as stationary; if c > 0.1, the state is defined as increasing; if c < −0.1, the state is defined as decreasing. The scale of English learning in 2012 and 2013 was counted according to 0 people, s1g state, 2 states and r2 states, of which sg1gg occurred, 1 occurred, gr1 occurred, 1 occurred, rs and r1r occurred. The first transition probability matrix of English learning scale is constructed as follows: p=[01000.50.50.500.5] p = \left[{\matrix{0 & 1 & 0 \cr 0 & {0.5} & {0.5} \cr {0.5} & 0 & {0.5} \cr}} \right]

According to the idea of the least squares method, the constraints are introduced into the model at the same time, and a E Markov state transition probability is obtained with the minimum sum of squares of errors in the transition process of each stage in each state and the row condition and the non-negative condition as constraints. For the matrix optimisation model, assuming that the system has n, an incompatible state, the state can be expressed as follows: {S1,S2,,Sj,,Sn} \left\{{{S_1},{S_2}, \cdots,{S_j}, \cdots,{S_n}} \right\}

After the k step transfer, the sum of squares of errors in the transfer process of each stage is written as follows: E=j=1nk=1m(Sj(k)i=1nSi(k1)pij)2 E = \sum\limits_{j = 1}^n \sum\limits_{k = 1}^m {\left({S_j^{(k)} - \sum\limits_{i = 1}^n S_i^{(k - 1)}{p_{ij}}} \right)^2}

Based on this, the quadratic programming model is established as follows: {minE=j=1nk=1m(Sj(k)i=1nSi(k1)pij)2s.t.j=1npij=1,i=1,2,,npij0,i=1,2,,n \left\{{\matrix{{\min E = \sum\limits_{j = 1}^n \sum\limits_{k = 1}^m {{\left({S_j^{(k)} - \sum\limits_{i = 1}^n S_i^{(k - 1)}{p_{ij}}} \right)}^2}} \cr {{\rm{s}}{\rm{.t}}{\rm{.}}\;\sum\limits_{j = 1}^n {p_{ij}} = 1,\quad \quad i = 1,2, \cdots,n} \cr {{p_{ij}} \ge 0,\quad \quad i = 1,2, \cdots,n} \cr}} \right.

Generation of membership functions

The purpose of this step is to find the membership function in the input space and the output space. Specifically, it is to cluster the training data, and each class corresponds to a fuzzy subset. The so-called clustering is to group the relatively close samples into one group. However, most of the input and output space division numbers (cluster numbers) are given in advance, which inevitably has a certain blindness, which directly affects the extraction quality of planning. Therefore, this paper adopts a density-based and grid-based clustering method to determine the initial cluster centre and the number of cluster centres, which can automatically divide the sample space and divide it in the sample space. Clustering learning time and other aspects have obvious advantages.

The transfer function of the first hidden layer node adopts the Gauss function, which is a kind of radial basis function, and the node output is written as follows: fi,ki(xi)=e(xicikP)2/σiki2 {{\rm{f}}_{\rm{i}}},{{\rm{k}}_{\rm{i}}}\left({{{\rm{x}}_{\rm{i}}}} \right) = {\rm{e}} - {\left({{{\rm{x}}_{\rm{i}}} - {{\rm{c}}_{\rm{i}}}{{\rm{k}}_{\rm{P}}}} \right)^2}/\sigma _{{\rm{iki}}}^2 where cikiσiki are the centre and width of each membership function, respectively. The initial value is the initial cluster centre. Before giving the basic idea of determining the initial expected value, the concept of overlap should be given first. The so-called overlapping degree refers to the degree of overlapping of two fuzzy subsets, which is expressed by the maximum membership degree of the intersection of these two fuzzy subsets. The definition of its overlap is shown in Figure 2.

Fig. 2

Definition of overlap degree

As shown in Figure 2, the overlap is 0.45. In fuzzy control, the degree of overlap is an important factor that affects the control performance. If the overlap is too large or too small, the control effect will be reduced. Usually, it should be controlled at about 0.45. Based on this principle, this paper deduces the formula of the initial expected value.

Suppose the distance between any two adjacent cluster centres is as follows: d=cici1 {\rm{d}} = \parallel {{\rm{c}}_{\rm{i}}} - {{\rm{c}}_{{\rm{i}} - 1}}\parallel

The radial basis function corresponding to the cluster centre is ci: fi(xp)=e(xici2/σ2 {{\rm{f}}_{\rm{i}}}\left({{{\rm{x}}_{\rm{p}}}} \right) = {\rm{e}} - \left({{{\rm{x}}_{\rm{i}}} - {{\rm{c}}_{\rm{i}}}^2/{\sigma ^2}} \right.

Expected value σi should be chosen so that the overlap of two adjacent fuzzy subsets is around 0.45. For this reason, let then, |xici| = d/2, then, 0.3679<fi(xi)<0.7788 0.3679 < {{\rm{f}}_{\rm{i}}}\left({{{\rm{x}}_{\rm{i}}}} \right) < 0.7788

At this time, the available public statements are: 14<(xici)2σi2=(d2)2σi2<1,σi=cici1γ,1<γ<2 {1 \over 4} < {{{{\left({{x_i} - {c_i}} \right)}^2}} \over {\sigma _i^2}} = {{{{\left({{d \over 2}} \right)}^2}} \over {\sigma _i^2}} < 1,\quad \quad {\sigma _i} = {{\left\| {{c_i} - {c_{i - 1}}} \right\|} \over \gamma},\quad \quad 1 < \gamma < 2

Therefore, for the RBF network in this paper, the expected value is written as follows: σiki=cikiciki1γ,1<γ<2 {\sigma _{i{k_i}}} = {{\left\| {{c_{i{k_i}}} - {c_{i{k_i} - 1}}} \right\|} \over \gamma},\quad \quad 1 < \gamma < 2

It is referred to here as the overlap coefficient γ.

Adjust membership function

In the forward propagation process, the input signal is processed one by one from the input layer and transmitted to the output layer, and the state of neurons in each layer only affects the state of neurons in the next layer. If the expected output cannot be obtained at the output layer, it will turn to back propagation and return the error of the output signal along the original connection path. By modifying the weights of neurons in each layer, the error signal is minimised. The output error evaluation function can be expressed as follows: E=12j=1M(yj0yj)2 {\rm{E}} = {1 \over 2}\sum\limits_{{\rm{j}} = 1}^{\rm{M}} {\left({{\rm{y}}_j^0 - {{\rm{y}}_{\rm{j}}}} \right)^2}

Among them, yj0 {\rm{y}}_j^0 is the target value, where yj is the network output learning process. For each training sample, starting from the input node, calculate the output value of each node forward layer by layer, know the output node of the network and then start from the output node, calculated for all hidden layer nodes; the calculation formula can be expressed as follows: Eyj=yj0yj - {{\partial {\rm{E}}} \over {\partial {{\rm{y}}_{\rm{j}}}}} = {\rm{y}}_{\rm{j}}^0 - {{\rm{y}}_{\rm{j}}}

And adjust the weights on the connection so that the parameters of the membership function can be determined by learning from the measured data (learning samples), and the position and shape of the membership function can be adjusted.

English learning process ciki and σiki the update is expressed by the following formula:

ciki(t + 1) = ciki(t) − ηδ E/δ ciki + αΔCiki(t), where Δcii = ciicj j(t − 1);

σiki(t + 1) = σiki(t) − ηδ E/δ σiki + αΔσiki(t), where Δσij = σijσij(t − 1);

where η(0 < η < 1) is the learning rate, with 0 ≤ α < 1 as the momentum factor, where δ represents the derivation. When learning network parameters, the method of the variable step size is adopted, and the specific method is as follows:

At that time, ΔE(t) < 0 η = ηγ, γ > 1, α = 0;

At that time, ΔE(t) > 0 η = ηβ, β < 1, 0 < α < 1.

Among them, ΔE(t) = E(t) − E(t − 1). But how to determine the step size requires trial and error. If η is too small, the algorithm will converge slowly; if η is too large, it may diverge.

Ontology-based computing

The heterogeneous encoding of multiple English words can be converted into a binary tree structure. All words correspond to the leaf nodes of the tree. The distance between the nodes where different word encodings are located on the tree represents the similarity between words, for example, for vocabulary w1, w2, a depth-based semantic similarity calculation method is given in the literature, and its formula can be expressed as follows: (w1,w2)=0.9811×D+0.49770.1244×D+4.4612 \left({{w_1},{w_2}} \right) = {{0.9811 \times D + 0.4977} \over {0.1244 \times D + 4.4612}}

In the above formula, D is the w1, w2 depth of the nearest common node in the tree structure graph of the corresponding vocabulary code. This simple calculation formula converts the distance information into a similarity value between 0 and 1, which can well reflect the similarity. Encoding in a large number of words actually implements word embedding through the similarity relationship between multiple words. The model predicts the context word for each given word by maximising wt. Its maximization formula can be expressed as follows: LSG=1|V|t=1Vciclogp(wt+iwt) {L_{{\rm{SG}}}} = {1 \over {|V|}}\sum\limits_{t = 1}^V \sum\limits_{- c \le i \le c} \log p\left({{\boldsymbol{w}_{t + i}}{w_t}} \right)

In the above formula, V is the corpus used to train the vocabulary vector; |V| is the total number of vocabulary; is wt the vector corresponding to the c current central vocabulary; is the size of the context window; wt+i is the wt context wt+i vocabulary vector p(wt+iwt).

After the vocabulary is vectorised, it is equivalent to establishing a mapping relationship between the vocabulary and the vector. Due to the natural operational properties between the vectors, the vocabulary vector forms a space. The similarity between words can be represented by the positional relationship of their corresponding word vectors in space. Use wi, wj to represent both the different words and the vectors corresponding to the words. The lexical similarity can be represented numerically by the inner product of its lexical vector wiTwj w_i^T{w_j} unit, and its geometric meaning is the cosine of the angle between the two vectors. Therefore, if it is used to S (w1, w2) express the similarity between words, its formula can be expressed as follows: S(w1,w2)=cos(w1,w2) S\left({{w_1},{w_2}} \right) = \cos \left({{w_1},{w_2}} \right)

The more similar two vectors in the vocabulary vector space, the smaller the angle, the higher the similarity. For the word sense similarity based on knowledge ontology, the result is recorded as s1, using the deep semantic similarity calculation method to calculate; for the word meaning similarity calculation based on vocabulary vector, the result is recorded as s2, using the calculation formula of similarity between words to calculate. If it cannot be calculated, its value is recorded as 0. It is recorded S = (s1, s2) as the observation quantity, which is defined as the state set.

For each state S = (s1, s2), the reinforcement learning model F obtains the best action as A = (a1, a2), which is the sum according to the strategy A = F (s1, s2); so, the strategy under the best action can be expressed as follows: V(S,A)=a1s1+a2s2 V(S,A) = {a_1}{s_1} + {a_2}{s_2}

The reinforcement model part, the input (s1, s2) is used as its state observation, the strategy is represented by a linear function, ɛ-the training is carried out through the greedy evaluation strategy, and the reward function is constructed with the difference between the action's income and the artificial value, and finally the learning result is obtained. When the learning model selects an action in the ɛ-greedy evaluation strategy, it will ɛ select a new action with 1 − ɛ a probability of.

For the data given above, the different environmental observations in the corresponding reinforcement learning model are calculated, where S = (s1, s2) and ɛ = 0.1, and the strategy obtained after training is as follows: F(s1,s2)={a1=1.001,a2=0SS1a1=1.431,a2=0.604SS2a1=0.729,a2=0.399SS3 F\left({{s_1},{s_2}} \right) = \left\{{\matrix{{{a_1} = 1.001,\quad {a_2} = 0} & {S \in {S_1}} \cr {{a_1} = 1.431,\quad {a_2} = - 0.604} & {S \in {S_2}} \cr {{a_1} = 0.729,\quad {a_2} = 0.399} & {S \in {S_3}} \cr}} \right.

When using this strategy, if the final result is a negative number, the similarity value is 0 because the similarity cannot be negative, which shows negative effects.

Simulation

In order to verify that the GLE teaching mode proposed in this paper has the best effect in colleges teaching how to read English, it is necessary to construct an experimental class (GLE teaching mode) and a control class (traditional teaching mode) in a university. There are 59 people in the experimental class and 61 people in the control class. Taking these two classes as a system and the students of these two classes as learning samples, we analyse the effectiveness of the membership function learning of the GLE teaching model implement the GLE teaching model proposed in this paper and the traditional teaching model in the two experimental classes. After 28 days of teaching, the English reading test scores of the experimental class and the control class were compared.

The effectiveness of membership function learning in the GLE teaching mode

In order to verify the effectiveness of the GLE teaching model in this paper in terms of membership function learning, the RBF network designed for the problem needs to be a two-input single-output network, which represents the following relationship: y = f (x1, x2). Taking a representative surface with such a relationship as an example, a simulation experiment is carried out to illustrate the effectiveness of the GLE teaching model in this paper. Suppose the experimental class and the control class form a system, and this system can be described in the following way: f(x1,x2)=64((x10.6)2+(x20.5)2)/90.5,0x11,0x21 f\left({{x_1},{x_2}} \right) = \sqrt {64 - \left({{{\left({{x_1} - 0.6} \right)}^2} + {{\left({{x_2} - 0.5} \right)}^2}} \right)} /9 - 0.5,\quad \quad 0 \le {x_1} \le 1,\quad \quad 0 \le {x_2} \le 1

On this function, the learning samples are randomly changed. Assume that the distribution and size of the membership function of x1 before learning is shown in Figure 3(a). After the learning adjustment of the GLE teaching mode, the final membership function of x2 is obtained as shown in Figure 3(b). The relative error curve between the output of the system after learning and the theoretical output of the original nonlinear function is shown in Figure 4.

Fig. 3

Comparison of membership function curves before and after learning. (a) Before study. (b) After study

Fig. 4

Relative error

In the effectiveness experiment of membership function learning, the membership distribution in Figure 3(a) is between −2 and 1, while in Figure 3(a) after the teaching mode of this paper, the original membership distribution is analysed. It is automatically adjusted, and its membership degree is distributed between 0 and 1. Therefore, it shows that, using the GLE teaching mode proposed in this paper, after learning the learning samples of the experimental class and the control class, the membership function after the learning adjustment can be automatically obtained. And the distribution range of the membership function will also be changed; at the same time, it can be seen from Figure 4 that the relative error of the fuzzy system output curve to the original nonlinear analytic function curve is between 0 and 0.6, that is, within the allowable range. The overall trend of the curve is a downward trend, indicating that the use of the GLE teaching mode proposed in this paper will promote the relative error of the output curve of the fuzzy system to the original nonlinear analytic function curve to become smaller and smaller; so, the GLE teaching mode membership function learning is obviously effective.

Pre-experiment test

According to the introduction of the teachers of the two classes, the observation of the author in the classroom, and the comparison of the reading scores of the students in the two classes the average scores of the students in the two classes in the reading part of the English final exam are similar, and the students’ conditions are basically similar. The author randomly selects class 1 to conduct task-based teaching experiments, namely the experimental class, while class 2 maintains the previous traditional teaching mode, that is, the control class. The number of students in the two classes was 59 (experimental class) and 61 (control class). According to the teaching plan, the weekly class hours of both classes are 4 periods, and the teaching order is normal in the experimental stage. First of all, two classes should be pre-tested, and the pre-test results are shown in Table 1.

Descriptive statistics of English reading pre-test scores

ClassNMeanStd. deviationStd. error mean

Pre-test resultsControl class6165.37658.67151.0115
Experimental class5964.25097.25380.9672

Table 1 shows the basic statistics of the analysis variables: the number of samples covering the two groups (N), the sample mean score (mean), the standard deviation of the sample (std. deviation) and the standard error of the mean (std. error mean). As can be seen from Table 1, the average grades of the two classes are very close, which are 65.3765 and 64.2509, respectively, for control and experimental classes. Then the independent sample t-test for the English reading pre-test scores of the two classes is shown in Table 2.

Independent sample t-test for English reading pre-test scores

Levene's test for equality of variances
FSig

Pre-test resultsEqual variances assumesEqual variances not assumed2.9970.079
t-test for equality of means
tdfSig. (2-tailed)Mean differenceStd. error difference95% Confidence interval of the difference
LowerUpper

Pre-test resultsEqual variances assumes0.378126.2410.6870.55671.4497−2.211763.34738
Equal variances not assumed0.388125.2210.6890.55671.41089−2.135123.27075

Table 2 shows the results of the independent sample t-test. According to the relevant theoretical analysis of statistics, in the independent sample T test, the significance level of the homogeneity test is 0.079>0.05, indicating the homogeneity of variances. Therefore, the hypothesis of homogeneity of variances is correct corresponding to a row of T test results. The significance level is 0.687>0.05; so, under the 95% confidence level, this means that there is no significant difference in the English reading test scores of the two classes (that is, the English reading levels of the two classes are equivalent), that is, the two classes are parallel classes.

GLE model teaching experimental case

The teaching steps of the experimental class are divided into the following steps:

Import stage

According to the content to be read in this class and the actual situation of the students, the author and the teacher have designed the following activities to activate the students’ background knowledge so as to attract their attention to the content to be read this time. The teacher speaks in English a small story of the Three Kingdoms period, the burning of Shangfang Valley. Because this story is familiar to everyone, students can understand it when it is told in English. The story immediately aroused widespread interest, and many students expressed their views on it. Then, in this case, the teacher takes the time to ask the students the questions:

Due to the interestingness of the story itself and the students’ interest just aroused, they soon relaxed their usual nervousness in the classroom and began to express their opinions. In this process, teachers focus on guiding students to think about the second question, and in this process, taking advantage of the opportunity that students do not know how to express some words, they also introduce some words that will appear in the reading materials so that they can be read for the next step. The text material lays the foundation.

Task link

In order to facilitate group cooperation in the classroom, the teacher divides the 59 students in the class into 10 groups according to certain requirements before class and then asks them to quickly read the text within 3 min, and then find out the article to tell after reading it. General meaning.

The purpose of speed reading is to help students understand as much key information as possible within a limited time, which is conducive to improving students’ reading speed and enabling them to develop good reading habits.

Discussion and analysis

After 3 min, most of the students can complete the reading of the full text and comprehend the general idea. At this time, the teacher arranges the students to sort out and discuss the main content in divided groups so that they can form a more accurate understanding of the content of the text. After the discussion, it is the reporting time of each group. Each group will send a representative to report the results of the group discussion to the whole class. The teacher and other students listen to the report together. During this process, the atmosphere of the whole class is relatively active, and students can put forward their own questions and suggestions after obtaining the consent of the speaker. In this way, students can compare the oral reports of each group on the basis of listening carefully and supplement and improve their own views while learning about other students’ different views and perspectives on the same issue and can also communicate with each other. They learn the characteristics of each other's language expression. For the mistakes made by the speakers, teachers and peers give them timely corrections and feedback. Of course, all corrections are based on the actual situation of the text. Through this process, the students’ ability to generalise and summarise has been improved, and they have also developed a good habit of brainstorming. More importantly, they have learned how to find and express the general idea of reading articles in English, which ultimately strengthened their participation in the classroom. Positivity, exercise their oral expression ability.

Practice

After completing the overall grasp and subsection understanding, students can get feedback on the mastery of the article through practice. At this time, according to the content of the article and combined with the exercises after class, the teacher still adopts the form of group cooperation and assigns new tasks to the students: find out the similarities and differences between Napoleon and Hitler's invasion of Moscow and then divide the group separately. With this task, the students immediately threw themselves into the search and discussion in full swing. After the discussion, according to the students’ discussion results and the actual content of the text, teachers and students completed the following table together. The purpose of this is to allow students to complete the exercises for the new learning based on the knowledge and content they have already mastered. The knowledge can be consolidated in time, so as to realise the transfer of knowledge.

Post-experimental test

After 28 days of teaching how to read English for college students using the GLE teaching mode and the traditional teaching mode, the instructors will prepare and mark the questions in person. The two classes use the same set of test papers for reading tests. SPSS11.5 software performs statistics as shown in Table 3.

Descriptive statistics of English reading post-test scores

ClassNMeanStd. deviationStd. error mean

Post-test scoresControl class6167.26276. 441100.75057
Experimental class5989.53715.281630.72005

Table 3 shows that when the test questions and other conditions are consistent, the final reading scores of the two classes have improved, but the average scores of the two classes have a large gap, which is 67.2627 for the control class and 89.5371 for the experimental class. Compared with the control class, the average score was improved by 22 points. Then, the independent sample t-test for the English reading post-test scores of the two classes is shown in Table 4.

Independent sample t-test for English reading pre-test scores

Levene's test for equality of variances
FSig

Post-test scoresEqual variances assumesEqual variances not assumed3.7710.049
t-test for equality of means
tdfSig. (2-tailed)Mean differenceStd. error difference95% Confidence interval of the difference
LowerUpper

Post-test scoresEqual variances assumes−8.465126.2410. 000−9.19801.07443−11.34607−7.05000
Equal variances not assumed−8.706125.2210.000−9.19801.04471−11.28750−7.10847

It can be seen from Table 4 that the significance of the homogeneity test is 0.051>0.05 in the independent sample T test of the post-experiment test at the end of the period, indicating the homogeneity of variance. Therefore, the hypothesis of homogeneity of variance is established, and the corresponding line of T test result is correct; the significance level is 0.000<0.05; so, under the 95% confidence level, there is a significant difference in the final grades of the two classes, which shows that the GLE teaching model proposed in this paper is more effective than the traditional mode.

Conclusion

With the rapid development of the economic era and the high-tech era, the country needs more scientific and technological talents who can master English and push China to the forefront of the world, and the traditional English education model has been unable to follow the rapid pace of the high-tech era; so, ‘The proposal of Protestant Reform’ is also a requirement for the development of the times and the revitalisation of the country. This paper breaks through traditional thinking and integrates the GLE teaching model into colleges teaching how to read English. First, the state of the system reaches other states after one transition, and the stable state of the system is obtained to realise the state transition probability matrix; then, the training data are clustered by the membership function; finally, the weights of neurons in each layer are modified by adjusting the membership function so that the error signal is minimised, and the parameters of the membership function are determined by learning, the position and shape of the membership function are adjusted and finally the strategy is obtained after training, and the GLE teaching model is finally obtained after training. Experiments show that after learning the learning samples, the membership distribution is automatically adjusted from the original −2 to 1, and the membership distribution is between 0 and 1. Therefore, using the GLE teaching model proposed in this paper it can be automatically obtained. After learning the adjusted membership function, the relative error also showed a significant downward trend; in the actual teaching experiment, after using the teaching mode of this paper and the traditional teaching mode, the average score of the experimental class was improved by 22 points compared with the control class. And the significance level is 0.000 <0.05; so, under the 95% confidence level, the final grades of the two classes are significantly different; so, the GLE teaching mode membership function learning is obviously effective; thus, the teaching mode proposed in this paper will be used in the future. It has far-reaching significance in the teaching of English reading.

Fig. 1

Overview of the GLE teaching mode
Overview of the GLE teaching mode

Fig. 2

Definition of overlap degree
Definition of overlap degree

Fig. 3

Comparison of membership function curves before and after learning. (a) Before study. (b) After study
Comparison of membership function curves before and after learning. (a) Before study. (b) After study

Fig. 4

Relative error
Relative error

Descriptive statistics of English reading post-test scores

Class N Mean Std. deviation Std. error mean

Post-test scores Control class 61 67.2627 6. 44110 0.75057
Experimental class 59 89.5371 5.28163 0.72005

Descriptive statistics of English reading pre-test scores

Class N Mean Std. deviation Std. error mean

Pre-test results Control class 61 65.3765 8.6715 1.0115
Experimental class 59 64.2509 7.2538 0.9672

Independent sample t-test for English reading pre-test scores

Levene's test for equality of variances
F Sig

Post-test scores Equal variances assumesEqual variances not assumed 3.771 0.049

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