Relevant words extraction method for recommender system Presentation slides.

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Presentation transcript:

Relevant words extraction method for recommender system Presentation slides

Abstraction Nowadays, E-commerce is very popular because of information explosion. Text mining is also important for information extraction. Users are more preferable to use the convenience system from many sources such as through web pages, , social network and so on. This system proposed the relevant words extraction method for car recommendation system from user . In relevant words extraction, this system proposed the Rule-based approach in Compiling Technique.

What is recommender system An information filtering technology, commonly used on e-commerce Web sites that uses a collaborative filtering to present information on items and products that are likely to be of interest to the reader. In presenting the recommendations, the recommender system will use details of the registered user's profile and opinions and habits of their whole community of users and compare the information to reference characteristics to present the recommendations.

Application in text mining There are two phases to implementing recommender system in text mining: 1- exploring the textual data for its content 2- using discovered information to improve the existing processes

Application in text mining The above mentioned phases are both important and can be referred to as descriptive mining and predictive mining. Descriptive mining involves discovering the themes and concepts that exist in a textual collection. Predictive modeling involves examining past data to predict future results

Text mining technique in Recommender system Text mining uncovers the underlying themes or concepts that are contained in large document collections. Text mining applications have two phases: exploring the textual data for its content and then using discovered information to improve the existing processes. Both are important and can be referred to as descriptive mining and predictive mining

Text mining technique in Recommender system Descriptive mining involves discovering the themes and concepts that exist in a textual collection. Predictive modeling involves examining past data to predict future results. In Descriptive mining, the unstructured texts are difficult to extract the useful data because of the richness and ambiguity of natural language. So this system proposed the relevant words extraction method. In predictive mining, this system implements the content-based recommender system by using the output keys of relevant words extraction method.

Similarity measures using jaccard coefficient Similarity Measuring It is needed to manipulate the similarity between the contents. There are many similarity methods used in content-based recommender system. But Jaccard Coefficient is most proper method for this proposed system. The Jaccard Coefficient is a similarity measure which ranges between 0 and 1. Similarity value 1 means the two objects are the same and 0 means they are completely different. The nearer to 1 is, the more similar between two objects. Jaccard can resolve their various similarity values in different similarity level.

Preprocessing If the user sends the order from , the system will extract the relevance sentences that concerned with their desired car information such as type of car, model number, amount of money they can afford, year, color, mileage, etc. Not relevance sentences will be ignored in this stage. For example, How are you? Not relevance Sentences I like the white color. Positive Sentence I don’t like the silver color Negative Sentence In the preprocessing stage the negative sentences are also ignored.

Information extraction Firstly, we need to do is stop words removal. After stop words removing, the system can extract the relevant sub-sentences

Recommendation After the system gets the important key pairs, content-based filtering approach will implement with Jaccard Coefficient method

Relevant words extraction method model user’s Sentence extraction Stop words removal Extract relevance sub-sentence Extract relevance words Content based recommended system with jaccarcd coefficient Recommen ded data preprocessing Information extraction Recommendation

Similarity measure Similarity Measuring It is needed to manipulate the similarity between the contents. There are many similarity methods used in content-based recommender system. But Jaccard Coefficient is most proper method for this proposed system. The Jaccard Coefficient is a similarity measure which ranges between 0 and 1. Similarity value 1 means the two objects are the same and 0 means they are completely different. The nearer to 1 is, the more similar between two objects

Similarity measures using jaccard coefficient S jaccard = MKey /T where, MKey = Match keys between key pairs and total attributes T = Total Attributes