Tuesday, 21 February 2017

Why is web scraping worldwide used

Why is web scraping worldwide used

Nowadays a huge amount of information is placed online, and alongside with it, appeared new techniques and software that analyse and extract it. Such a software technique is web scraping, which simulates human exploration of the World Wide Web. The software that does this either implements the low-level Hypertext Transfer Protocol or embeds a web browser. Its main goal is to automatically collect information from the World Wide Web. This process requires semantic understanding, text processing, artificial intelligence and a close interaction between human and computer. This technique is widely used by business owners that want to find new ways of increasing their profit and using the relevant marketing strategies.

Web scraping is important for successful businesses because it provides three categories of information: web content, web usage and web structure. This means that it extracts information from web pages, server logs, links between pages and people, and browser activity data. This helps companies having access to the needed data, because web scrapping services transform unstructured data into structured data. The direct result of this process is seen on the outcome of the businesses. Companies set up easy web scraping programs that have the purpose to provide reliable and efficient information for its users. These services make this process much easier. Because companies are the ones that focused their energy to implement such a program, they benefit from multiple advantages. The companies that want to have a close relation with their clients, have the opportunity to send notifications to their customers that include promotions, price changes, or the launching of a new product. When using web scraping, companies have the opportunity of comparing their product prices with the ones of the similar ones.

Web data extraction proves to be very useful when meteorologists want to monitor weather changes. The companies that use this type of information extraction have also other advantages alongside with the ones listed above. This process allows them to transform page contents according to their needs, and they can be sure that the data collected is reliable and accurate. They can retrieve the data from their websites, because this process can be used with both dynamic and static pages. Web data extraction is very valuable because it is able to recognize semantic annotation. The companies that need complicated data can get it by using web scraping, and this leads to minimizing costs and more sales. Companies choose to use marketing intelligence because it helps them increase their profit through good business practices. The companies that use these services are the ones that practice online shipping, because they want to provide their clients information about services, terms of services and products. Other type of businesses that uses this service are stores, which supply their products online. This service helps them provide information about their services and products, but if it is a more complex store, then it helps them offer their clients details about their procedures and head offices. Web scraping proves to be a successful way of achieving success in many domains.

Source: http://www.amazines.com/article_detail.cfm/6193234?articleid=6193234

Monday, 13 February 2017

Benefits of Predictive Analytics and Data Mining Services

Benefits of Predictive Analytics and Data Mining Services

Predictive Analytics is the process of dealing with variety of data and apply various mathematical formulas to discover the best decision for a given situation. Predictive analytics gives your company a competitive edge and can be used to improve ROI substantially. It is the decision science that removes guesswork out of the decision-making process and applies proven scientific guidelines to find right solution in the shortest time possible.

Predictive analytics can be helpful in answering questions like:

-  Who are most likely to respond to your offer?
-  Who are most likely to ignore?
-  Who are most likely to discontinue your service?
-  How much a consumer will spend on your product?
-  Which transaction is a fraud?
-  Which insurance claim is a fraudulent?
-  What resource should I dedicate at a given time?

Benefits of Data mining include:

-  Better understanding of customer behavior propels better decision
-  Profitable customers can be spotted fast and served accordingly
-  Generate more business by reaching hidden markets
-  Target your Marketing message more effectively
-  Helps in minimizing risk and improves ROI.
-  Improve profitability by detecting abnormal patterns in sales, claims, transactions etc
-  Improved customer service and confidence
-  Significant reduction in Direct Marketing expenses

Basic steps of Predictive Analytics are as follows:

-  Spot the business problem or goal
-  Explore various data sources such as transaction history, user demography, catalog details, etc)
-  Extract different data patterns from the above data
-  Build a sample model based on data & problem
-  Classify data, find valuable factors, generate new variables
-  Construct a Predictive model using sample
-  Validate and Deploy this Model

Standard techniques used for it are:

-  Decision Tree
-  Multi-purpose Scaling
-  Linear Regressions
-  Logistic Regressions
-  Factor Analytics
-  Genetic Algorithms
-  Cluster Analytics
-  Product Association

Source:http://ezinearticles.com/?Benefits-of-Predictive-Analytics-and-Data-Mining-Services&id=4766989

Tuesday, 7 February 2017

Data Mining and Financial Data Analysis

Introduction:

Most marketers understand the value of collecting financial data, but also realize the challenges of leveraging this knowledge to create intelligent, proactive pathways back to the customer. Data mining - technologies and techniques for recognizing and tracking patterns within data - helps businesses sift through layers of seemingly unrelated data for meaningful relationships, where they can anticipate, rather than simply react to, customer needs as well as financial need. In this accessible introduction, we provides a business and technological overview of data mining and outlines how, along with sound business processes and complementary technologies, data mining can reinforce and redefine for financial analysis.

Objective:

1. The main objective of mining techniques is to discuss how customized data mining tools should be developed for financial data analysis.

2. Usage pattern, in terms of the purpose can be categories as per the need for financial analysis.

3. Develop a tool for financial analysis through data mining techniques.

Data mining:

Data mining is the procedure for extracting or mining knowledge for the large quantity of data or we can say data mining is "knowledge mining for data" or also we can say Knowledge Discovery in Database (KDD). Means data mining is : data collection , database creation, data management, data analysis and understanding.

There are some steps in the process of knowledge discovery in database, such as

1. Data cleaning. (To remove nose and inconsistent data)

2. Data integration. (Where multiple data source may be combined.)

3. Data selection. (Where data relevant to the analysis task are retrieved from the database.)

4. Data transformation. (Where data are transformed or consolidated into forms appropriate for mining by performing summary or aggregation operations, for instance)

5. Data mining. (An essential process where intelligent methods are applied in order to extract data patterns.)

6. Pattern evaluation. (To identify the truly interesting patterns representing knowledge based on some interesting measures.)

7. Knowledge presentation.(Where visualization and knowledge representation techniques are used to present the mined knowledge to the user.)

Data Warehouse:

A data warehouse is a repository of information collected from multiple sources, stored under a unified schema and which usually resides at a single site.

Text:

Most of the banks and financial institutions offer a wide verity of banking services such as checking, savings, business and individual customer transactions, credit and investment services like mutual funds etc. Some also offer insurance services and stock investment services.

There are different types of analysis available, but in this case we want to give one analysis known as "Evolution Analysis".

Data evolution analysis is used for the object whose behavior changes over time. Although this may include characterization, discrimination, association, classification, or clustering of time related data, means we can say this evolution analysis is done through the time series data analysis, sequence or periodicity pattern matching and similarity based data analysis.

Data collect from banking and financial sectors are often relatively complete, reliable and high quality, which gives the facility for analysis and data mining. Here we discuss few cases such as,

Eg, 1. Suppose we have stock market data of the last few years available. And we would like to invest in shares of best companies. A data mining study of stock exchange data may identify stock evolution regularities for overall stocks and for the stocks of particular companies. Such regularities may help predict future trends in stock market prices, contributing our decision making regarding stock investments.

Eg, 2. One may like to view the debt and revenue change by month, by region and by other factors along with minimum, maximum, total, average, and other statistical information. Data ware houses, give the facility for comparative analysis and outlier analysis all are play important roles in financial data analysis and mining.

Eg, 3. Loan payment prediction and customer credit analysis are critical to the business of the bank. There are many factors can strongly influence loan payment performance and customer credit rating. Data mining may help identify important factors and eliminate irrelevant one.

Factors related to the risk of loan payments like term of the loan, debt ratio, payment to income ratio, credit history and many more. The banks than decide whose profile shows relatively low risks according to the critical factor analysis.

We can perform the task faster and create a more sophisticated presentation with financial analysis software. These products condense complex data analyses into easy-to-understand graphic presentations. And there's a bonus: Such software can vault our practice to a more advanced business consulting level and help we attract new clients.

To help us find a program that best fits our needs-and our budget-we examined some of the leading packages that represent, by vendors' estimates, more than 90% of the market. Although all the packages are marketed as financial analysis software, they don't all perform every function needed for full-spectrum analyses. It should allow us to provide a unique service to clients.

The Products:

ACCPAC CFO (Comprehensive Financial Optimizer) is designed for small and medium-size enterprises and can help make business-planning decisions by modeling the impact of various options. This is accomplished by demonstrating the what-if outcomes of small changes. A roll forward feature prepares budgets or forecast reports in minutes. The program also generates a financial scorecard of key financial information and indicators.

Customized Financial Analysis by BizBench provides financial benchmarking to determine how a company compares to others in its industry by using the Risk Management Association (RMA) database. It also highlights key ratios that need improvement and year-to-year trend analysis. A unique function, Back Calculation, calculates the profit targets or the appropriate asset base to support existing sales and profitability. Its DuPont Model Analysis demonstrates how each ratio affects return on equity.

Financial Analysis CS reviews and compares a client's financial position with business peers or industry standards. It also can compare multiple locations of a single business to determine which are most profitable. Users who subscribe to the RMA option can integrate with Financial Analysis CS, which then lets them provide aggregated financial indicators of peers or industry standards, showing clients how their businesses compare.

iLumen regularly collects a client's financial information to provide ongoing analysis. It also provides benchmarking information, comparing the client's financial performance with industry peers. The system is Web-based and can monitor a client's performance on a monthly, quarterly and annual basis. The network can upload a trial balance file directly from any accounting software program and provide charts, graphs and ratios that demonstrate a company's performance for the period. Analysis tools are viewed through customized dashboards.

PlanGuru by New Horizon Technologies can generate client-ready integrated balance sheets, income statements and cash-flow statements. The program includes tools for analyzing data, making projections, forecasting and budgeting. It also supports multiple resulting scenarios. The system can calculate up to 21 financial ratios as well as the breakeven point. PlanGuru uses a spreadsheet-style interface and wizards that guide users through data entry. It can import from Excel, QuickBooks, Peachtree and plain text files. It comes in professional and consultant editions. An add-on, called the Business Analyzer, calculates benchmarks.

ProfitCents by Sageworks is Web-based, so it requires no software or updates. It integrates with QuickBooks, CCH, Caseware, Creative Solutions and Best Software applications. It also provides a wide variety of businesses analyses for nonprofits and sole proprietorships. The company offers free consulting, training and customer support. It's also available in Spanish.

Source:http://ezinearticles.com/?Data-Mining-and-Financial-Data-Analysis&id=2752017

Wednesday, 25 January 2017

Facts on Data Mining

Facts on Data Mining

Data mining is the process of examining a data set to extract certain patterns. Companies use this process to determine the outcome of their existing goals. They summarize this information into useful methods to create revenue and/or cut costs. When search engines are accessed, they begin to build lists of links from the first page it accesses. It continues this process throughout the site until it reaches the root page. This data not only includes text, but also numbers and facts.

Data mining focuses on consumers in relation to both "internal" (price, product positioning), and "external" (competition, demographics) factors which help determine consumer price, customer satisfaction, and corporate profits. It also provides a link between separate transactions and analytical systems. Four types of relationships are sought with data mining:

o Classes - information used to increase traffic
o Clusters - grouped to determine consumer preferences or logical relationships
o Associations - used to group products normally bought together (i.e., bacon, eggs; milk, bread)
o Patterns - used to anticipate behavior trends

This process provides numerous benefits to businesses, governments, society, and especially individuals as a whole. It starts with a cleaning process which removes errors and ensures consistency. Algorithms are then used to "mine" the data to establish patterns.

 Source: http://ezinearticles.com/?Facts-on-Data-Mining&id=3640795

Thursday, 12 January 2017

Resume Extraction: To Grab Best Candidate

Resume Extraction: To Grab Best Candidate

Selecting the eligible and potential employee for the organization is the most significant task of any company. Success rate of any company totally depends on the assortment of talented and experienced candidates. Quality is of prime significance than quantity and for this, having the best resume analyzer is a good idea. The tasks related to recruitment should be performed well by the HR department.

Examination of a perfectly apt candidate is the main concern of the qualitative resume software. A number of myriad aspects are considered for the resume assessment. There posses a competition of various talents that candidate possesses. Before recruitment of any applicant, his job analysis is performed by the HR department. For this purpose performing resume extraction becomes essential and resume analyzer is the medium to do so.

Proficient software performs a helpful task at job portals. The resume analyzer parses all the resumes and filters them on the basis of presence of keyword. It facilitates to match the particular keyword with every available resume. Presence of keywords indicates that the candidate is short listed while absence refers rejection. As these days everyone needs fast results performing resume extraction becomes essential to save time and money.

Resume analyzer helps in accepting and rejecting the resume of the candidates. It position or rank the candidates in to a list, this criteria is based on the presence of the keywords and the required apt information about the candidate. Resume software implements the standard policies for formatting the process of resume extraction and uploads this important data into your available database. This data is available in the text format. Essential information like name, qualifications, contact details, certifications, last work experience etc present in resume is uploaded into the database.

This information is used to match the criteria of the required job post. Ranking of the candidates helps to opt for the most suitable and skilled candidate among the list of thousands.

Resume extraction is one of the essential aspects to sort out the potential candidate.

Source : http://ezinearticles.com/?Resume-Extraction:-To-Grab-Best-Candidate&id=5894132

Resume Extraction: To Grab Best Candidate

Resume Extraction: To Grab Best Candidate

Selecting the eligible and potential employee for the organization is the most significant task of any company. Success rate of any company totally depends on the assortment of talented and experienced candidates. Quality is of prime significance than quantity and for this, having the best resume analyzer is a good idea. The tasks related to recruitment should be performed well by the HR department.

Examination of a perfectly apt candidate is the main concern of the qualitative resume software. A number of myriad aspects are considered for the resume assessment. There posses a competition of various talents that candidate possesses. Before recruitment of any applicant, his job analysis is performed by the HR department. For this purpose performing resume extraction becomes essential and resume analyzer is the medium to do so.

Proficient software performs a helpful task at job portals. The resume analyzer parses all the resumes and filters them on the basis of presence of keyword. It facilitates to match the particular keyword with every available resume. Presence of keywords indicates that the candidate is short listed while absence refers rejection. As these days everyone needs fast results performing resume extraction becomes essential to save time and money.

Resume analyzer helps in accepting and rejecting the resume of the candidates. It position or rank the candidates in to a list, this criteria is based on the presence of the keywords and the required apt information about the candidate. Resume software implements the standard policies for formatting the process of resume extraction and uploads this important data into your available database. This data is available in the text format. Essential information like name, qualifications, contact details, certifications, last work experience etc present in resume is uploaded into the database.

This information is used to match the criteria of the required job post. Ranking of the candidates helps to opt for the most suitable and skilled candidate among the list of thousands.

Resume extraction is one of the essential aspects to sort out the potential candidate.

Source : http://ezinearticles.com/?Resume-Extraction:-To-Grab-Best-Candidate&id=5894132

Tuesday, 3 January 2017

Data Mining: Its Description and Uses

Data Mining: Its Description and Uses

Data mining also known as the process of analyzing the KDD which stands for Knowledge Discovery in Databases is a part of statistics and computer science. It is a process which aims to find out many various patterns in enormous sets of relational data.

It uses ways at the fields of machine learning, database systems, artificial intelligence, and statistics. It permits users to examine data from many various perspectives, sort it, and summarize the identified relationships.

In general, the objective of data mining process is to obtain info out of a data set and convert it into a comprehensible outline. Also, it includes the following: data processing, data management and database aspects, visualization, complexity considerations, online updating, inference and model considerations, and interestingness metrics.

On the other hand, the actual data mining assignment is the semi-automatic or automatic exploration of huge quantities of information to extract patterns that are interesting and previously unknown. Such patterns can be the unusual records or the anomaly detection, data records groups or the cluster analysis, and the dependencies or the association rule mining. Usually, this involves utilizing database methods like spatial indexes. Such patters could be perceived as a type of summary of input data, and could be used in further examination or, for example, in predictive analysis and machine learning.

Today, data mining is utilized by different consumer-focused companies like those in the financial, retails, marketing, and communications fields. It permits such companies to find out relationships among the internal aspects like staff skills, price, product positioning, and external aspects like customer information, competition, and economic indicators. Additionally, it allows them to define the effect on corporate profits, sales, and customer satisfaction; and dig into the summary information to be able to see transactional data in detail.

With data mining process, a retailer can make use of point-of-scale customer purchases records to send promotions based on the purchase history of a client. The retailer can improve products and campaigns or promotions that can be appealing to a definite customer group by using mining data from comment cards.

Generally, any of the following relationships are obtained.

1. Associations: Data could be mined to recognize associations.
2. Clusters: Data are sorted based on a rational relationships or consumer preferences.
3. Sequential Patters: Data is mined to expect patterns and trends in behavior.
4. Classes: Data that are stored are utilized to trace data in predetermined segments.

Source : http://ezinearticles.com/?Data-Mining:-Its-Description-and-Uses&id=7252273