May 28

 

What is a Neural Network?

 

First of all, when we are talking about a neural network, we should more properly say “artificial neural network” (ANN), because that is what we mean most of the time. Biological neural networks are much more complicated than the mathematical models we use for ANNs. But it is customary to be lazy and drop the “A” or the “artificial”.

An Artificial Neural Network (ANN) is an information processing paradigm that is inspired by the way biological nervous systems, such as the brain, process information. The key element of this paradigm is the novel structure of the information processing system. It is composed of a large number of highly interconnected processing elements (neurons) working in unison to solve specific problems. ANNs, like people, learn by example. An ANN is configured for a specific application, such as pattern recognition or data classification, through a learning process. Learning in biological systems involves adjustments to the synaptic connections that exist between the neurons. This is true of ANNs as well.

 

 

Historical Background of Neural Networks

 

Neural network simulations appear to be a recent development. However, this field was established before the advent of computers, and has survived at least one major setback and several eras.

Many importand advances have been boosted by the use of inexpensive computer emulations. Following an initial period of enthusiasm, the field survived a period of frustration and disrepute. During this period when funding and professional support was minimal, important advances were made by relatively few reserchers. These pioneers were able to develop convincing technology which surpassed the limitations identified by Minsky and Papert. Minsky and Papert, published a book (in 1969) in which they summed up a general feeling of frustration (against neural networks) among researchers, and was thus accepted by most without further analysis. Currently, the neural network field enjoys a resurgence of interest and a corresponding increase in funding.

 

The history of neural networks that was described above can be divided into several periods:

 

First Attempts: There were some initial simulations using formal logic. McCulloch and Pitts (1943) developed models of neural networks based on their understanding of neurology. These models made several assumptions about how neurons worked. Their networks were based on simple neurons which were considered to be binary devices with fixed thresholds. The results of their model were simple logic functions such as “a or b” and “a and b”. Another attempt was by using computer simulations. Two groups (Farley and Clark, 1954; Rochester, Holland, Haibit and Duda, 1956). The first group (IBM reserchers) maintained closed contact with neuroscientists at McGill University. So whenever their models did not work, they consulted the neuroscientists. This interaction established a multidiscilinary trend which continues to the present day.

 

Promising & Emerging Technology: Not only was neroscience influential in the development of neural networks, but psychologists and engineers also contributed to the progress of neural network simulations. Rosenblatt (1958) stirred considerable interest and activity in the field when he designed and developed the Perceptron. The Perceptron had three layers with the middle layer known as the association layer. This system could learn to connect or associate a given input to a random output unit.

Another system was the ADALINE (ADAptive LInear Element) which was developed in 1960 by Widrow and Hoff (of Stanford University). The ADALINE was an analogue electronic device made from simple components. The method used for learning was different to that of the Perceptron, it employed the Least-Mean-Squares (LMS) learning rule.

 

Period of Frustration & Disrepute: In 1969 Minsky and Papert wrote a book in which they generalised the limitations of single layer Perceptrons to multilayered systems. In the book they said: “. . . our intuitive judgment that the extension (to multilayer systems) is sterile”. The significant result of their book was to eliminate funding for research with neural network simulations. The conclusions supported the disenhantment of reserchers in the field. As a result, considerable prejudice against this field was activated.

 

Innovation: Although public interest and available funding were minimal, several researchers continued working to develop neuromorphically based computaional methods for problems such as pattern recognition.

During this period several paradigms were generated which modern work continues to enhance. Grossberg’s (Steve Grossberg and Gail Carpenter in 1988) influence founded a school of thought which explores resonating algorithms. They developed the ART (Adaptive Resonance Theory) networks based on biologically plausible models. Anderson and Kohonen developed associative techniques independent of each other. Klopf (A. Henry Klopf) in 1972, developed a basis for learning in artificial neurons based on a biological principle for neuronal learning called heterostasis.

Werbos (Paul Werbos 1974) developed and used the back-propagation learning method, however several years passed before this approach was popularized. Back-propagation nets are probably the most well known and widely applied of the neural networks today. In essence, the back-propagation net. is a Perceptron with multiple layers, a different thershold function in the artificial neuron, and a more robust and capable learning rule.

Amari (A. Shun-Ichi 1967) was involved with theoretical developments: he published a paper which established a mathematical theory for a learning basis (error-correction method) dealing with adaptive patern classification. While Fukushima (F. Kunihiko) developed a step wise trained multilayered neural network for interpretation of handwritten characters. The original network was published in 1975 and was called the Cognitron.

 

Re-Emergence: Progress during the late 1970s and early 1980s was important to the re-emergence on interest in the neural network field. Several factors influenced this movement. For example, comprehensive books and conferences provided a forum for people in diverse fields with specialized technical languages, and the response to conferences and publications was quite positive. The news media picked up on the increased activity and tutorials helped disseminate the technology. Academic programs appeared and courses were inroduced at most major Universities (in US and Europe). Attention is now focused on funding levels throughout Europe, Japan and the US and as this funding becomes available, several new commercial with applications in industry and finacial institutions are emerging.

Today: Significant progress has been made in the field of neural networks-enough to attract a great deal of attention and fund further research. Advancement beyond current commercial applications appears to be possible, and research is advancing the field on many fronts. Neurally based chips are emerging and applications to complex problems developing. Clearly, today is a period of transition for neural network technology.

 

Why use neural networks?

 

Neural networks, with their remarkable ability to derive meaning from complicated or imprecise data, can be used to extract patterns and detect trends that are too complex to be noticed by either humans or other computer techniques. A trained neural network can be thought of as an “expert” in the category of information it has been given to analyse. This expert can then be used to provide projections given new situations of interest and answer “what if” questions.

Other advantages include:

 


Adaptive learning: An ability to learn how to do tasks based on the data given for training or initial experience.
Self-Organisation: An ANN can create its own organisation or representation of the information it receives during learning time.
Real Time Operation: ANN computations may be carried out in parallel, and special hardware devices are being designed and manufactured which take advantage of this capability.
Fault Tolerance via Redundant Information Coding: Partial destruction of a network leads to the corresponding degradation of performance. However, some network capabilities may be retained even with major network damage.

 


 
 
 
 
 
Neural networks versus conventional computers

 

Neural networks take a different approach to problem solving than that of conventional computers. Conventional computers use an algorithmic approach i. e. the computer follows a set of instructions in order to solve a problem. Unless the specific steps that the computer needs to follow are known the computer cannot solve the problem. That restricts the problem solving capability of conventional computers to problems that we already understand and know how to solve. But computers would be so much more useful if they could do things that we don’t exactly know how to do.

Neural networks process information in a similar way the human brain does. The network is composed of a large number of highly interconnected processing elements(neurones) working in parallel to solve a specific problem. Neural networks learn by example. They cannot be programmed to perform a specific task. The examples must be selected carefully otherwise useful time is wasted or even worse the network might be functioning incorrectly. The disadvantage is that because the network finds out how to solve the problem by itself, its operation can be unpredictable.

On the other hand, conventional computers use a cognitive approach to problem solving; the way the problem is to solved must be known and stated in small unambiguous instructions. These instructions are then converted to a high level language program and then into machine code that the computer can understand. These machines are totally predictable; if anything goes wrong is due to a software or hardware fault.

Neural networks and conventional algorithmic computers are not in competition but complement each other. There are tasks are more suited to an algorithmic approach like arithmetic operations and tasks that are more suited to neural networks. Even more, a large number of tasks, require systems that use a combination of the two approaches (normally a conventional computer is used to supervise the neural network) in order to perform at maximum efficiency.

 

 

 

 

 

 

Neural Networks in Practice

 

Given this description of neural networks and how they work, what real world applications are they suited for? Neural networks have broad applicability to real world business problems. In fact, they have already been successfully applied in many industries.

 

Since neural networks are best at identifying patterns or trends in data, they are well suited for prediction or forecasting needs including:

 

 

sales forecasting

industrial process control

customer research

data validation

risk management

target marketing

But to give you some more specific examples; ANN are also used in the following specific paradigms: recognition of speakers in communications; diagnosis of hepatitis; recovery of telecommunications from faulty software; interpretation of multimeaning Chinese words; undersea mine detection; texture analysis; three-dimensional object recognition; handwritten word recognition; and facial recognition.

 

 

 

 

 

Human and Artificial Neurones – investigating the similarities

 

How the Human Brain Learns?

 

Much is still unknown about how the brain trains itself to process information, so theories abound. In the human brain, a typical neuron collects signals from others through a host of fine structures called dendrites. The neuron sends out spikes of electrical activity through a long, thin stand known as an axon, which splits into thousands of branches. At the end of each branch, a structure called a synapse converts the activity from the axon into electrical effects that inhibit or excite activity from the axon into electrical effects that inhibit or excite activity in the connected neurones. When a neuron receives excitatory input that is sufficiently large compared with its inhibitory input, it sends a spike of electrical activity down its axon. Learning occurs by changing the effectiveness of the synapses so that the influence of one neuron on another changes.

 

 

 

 

 

 

Components of a neuron

 


 

 

 

 

The synapse

 


 
From Human Neurones to Artificial Neurones

 

We conduct these neural networks by first trying to deduce the essential features of neurones and their interconnections. We then typically program a computer to simulate these features. However because our knowledge of neurones is incomplete and our computing power is limited, our models are necessarily gross idealisations of real networks of neurones.

 

The neuron model

 

Architecture of neural networks


Feed-forward networks

 Feed-forward ANNs  allow signals to travel one way only; from input to output. There is no feedback (loops) i. e. the output of any layer does not affect that same layer. Feed-forward ANNs tend to be straight forward networks that associate inputs with outputs. They are extensively used in pattern recognition. This type of organisation is also referred to as bottom-up or top-down.

 


Feedback networks

Feedback networks (figure 1) can have signals travelling in both directions by introducing loops in the network. Feedback networks are very powerful and can get extremely complicated. Feedback networks are dynamic; their ‘state’ is changing continuously until they reach an equilibrium point. They remain at the equilibrium point until the input changes and a new equilibrium needs to be found. Feedback architectures are also referred to as interactive or recurrent, although the latter term is often used to denote feedback connections in single-layer organisations.

 

 

 

 

Applications of neural networks


Neural Networks in Practice

Given this description of neural networks and how they work, what real world applications are they suited for? Neural networks have broad applicability to real world business problems. In fact, they have already been successfully applied in many industries.

Since neural networks are best at identifying patterns or trends in data, they are well suited for prediction or forecasting needs including:

sales forecasting

industrial process control

customer research

data validation

risk management

target marketing

But to give you some more specific examples; ANN are also used in the following specific paradigms: recognition of speakers in communications; diagnosis of hepatitis; recovery of telecommunications from faulty software; interpretation of multimeaning Chinese words; undersea mine detection; texture analysis; three-dimensional object recognition; hand-written word recognition; and facial recognition.


Neural networks in medicine

 

Artificial Neural Networks (ANN) are currently a ‘hot’ research area in medicine and it is believed that they will receive extensive application to biomedical systems in the next few years. At the moment, the research is mostly on modelling parts of the human body and recognising diseases from various scans (e. g. cardiograms, CAT scans, ultrasonic scans, etc. ).

Neural networks are ideal in recognising diseases using scans since there is no need to provide a specific algorithm on how to identify the disease. Neural networks learn by example so the details of how to recognise the disease are not needed. What is needed is a set of examples that are representative of all the variations of the disease. The quantity of examples is not as important as the ‘quantity’. The examples need to be selected very carefully if the system is to perform reliably and efficiently.


Modelling and Diagnosing the Cardiovascular System

Neural Networks are used experimentally to model the human cardiovascular system. Diagnosis can be achieved by building a model of the cardiovascular system of an individual and comparing it with the real time physiological measurements taken from the patient. If this routine is carried out regularly, potential harmful medical conditions can be detected at an early stage and thus make the process of combating the disease much easier.

A model of an individual’s cardiovascular system must mimic the relationship among physiological variables (i. e. , heart rate, systolic and diastolic blood pressures, and breathing rate) at different physical activity levels. If a model is adapted to an individual, then it becomes a model of the physical condition of that individual. The simulator will have to be able to adapt to the features of any individual without the supervision of an expert. This calls for a neural network.

Another reason that justifies the use of ANN technology, is the ability of ANNs to provide sensor fusion which is the combining of values from several different sensors. Sensor fusion enables the ANNs to learn complex relationships among the individual sensor values, which would otherwise be lost if the values were individually analysed. In medical modelling and diagnosis, this implies that even though each sensor in a set may be sensitive only to a specific physiological variable, ANNs are capable of detecting complex medical conditions by fusing the data from the individual biomedical sensors.


Electronic noses

ANNs are used experimentally to implement electronic noses. Electronic noses have several potential applications in telemedicine. Telemedicine is the practice of medicine over long distances via a communication link. The electronic nose would identify odours in the remote surgical environment. These identified odours would then be electronically transmitted to another site where an door generation system would recreate them. Because the sense of smell can be an important sense to the surgeon, telesmell would enhance telepresent surgery.
For more information on telemedicine and telepresent surgery

 


Electronic noses

ANNs are used experimentally to implement electronic noses. Electronic noses have several potential applications in telemedicine. Telemedicine is the practice of medicine over long distances via a communication link. The electronic nose would identify odours in the remote surgical environment. These identified odours would then be electronically transmitted to another site where an door generation system would recreate them. Because the sense of smell can be an important sense to the surgeon, telesmell would enhance telepresent surgery.
For more information on telemedicine and telepresent surgery


 
 
Neural Networks in business

 

 

Business is a diverted field with several general areas of specialisation such as accounting or financial analysis. Almost any neural network application would fit into one business area or financial analysis.

There is some potential for using neural networks for business purposes, including resource allocation and scheduling. There is also a strong potential for using neural networks for database mining, that is, searching for patterns implicit within the explicitly stored information in databases. Most of the funded work in this area is classified as proprietary. Thus, it is not possible to report on the full extent of the work going on. Most work is applying neural networks, such as the Hopfield-Tank network for optimization and scheduling.


    Marketing

There is a marketing application which has been integrated with a neural network system. The Airline Marketing Tactician (a trademark abbreviated as AMT) is a computer system made of various intelligent technologies including expert systems. A feedforward neural network is integrated with the AMT and was trained using back-propagation to assist the marketing control of airline seat allocations. The adaptive neural approach was amenable to rule expression. Additionaly, the application’s environment changed rapidly and constantly, which required a continuously adaptive solution. The system is used to monitor and recommend booking advice for each departure. Such information has a direct impact on the profitability of an airline and can provide a technological advantage for users of the system. [Hutchison & Stephens, 1987]

While it is significant that neural networks have been applied to this problem, it is also important to see that this intelligent technology can be integrated with expert systems and other approaches to make a functional system. Neural networks were used to discover the influence of undefined interactions by the various variables. While these interactions were not defined, they were used by the neural system to develop useful conclusions. It is also noteworthy to see that neural networks can influence the bottom line.

 

 

 

Are there any limits to Neural Networks?

 

The major issues of concern today are the scalability problem, testing, verification, and integration of neural network systems into the modern environment. Neural network programs sometimes become unstable when applied to larger problems. The defence, nuclear and space industries are concerned about the issue of testing and verification. The mathematical theories used to guarantee the performance of an applied neural network are still under development. The solution for the time being may be to train and test these intelligent systems much as we do for humans. Also there are some more practical problems like:


the operational problem encountered when attempting to simulate the parallelism of neural networks. Since the majority of neural networks are simulated on sequential machines, giving rise to a very rapid increase in processing time requirements as size of the problem expands.

Solution: implement neural networks directly in hardware, but these need a lot of development still.
instability to explain any results that they obtain. Networks function as “black boxes” whose rules of operation are completely unknown

 

 

The Future

Because gazing into the future is somewhat like gazing into a crystal ball, so it is better to quote some “predictions”. Each prediction rests on some sort of evidence or established trend which, with extrapolation, clearly takes us into a new realm.

Prediction 1:

Neural Networks will fascinate user-specific systems for education, information processing, and entertainment. “Alternative ralities”, produced by comprehensive environments, are attractive in terms of their potential for systems control, education, and entertainment. This is not just a far-out research trend, but is something which is becoming an increasing part of our daily existence, as witnessed by the growing interest in comprehensive “entertainment centers” in each home.

This “programming” would require feedback from the user in order to be effective but simple and “passive” sensors (e. g fingertip sensors, gloves, or wristbands to sense pulse, blood pressure, skin ionisation, and so on), could provide effective feedback into a neural control system. This could be achieved, for example, with sensors that would detect pulse, blood pressure, skin ionisation, and other variables which the system could learn to correlate with a person’s response state.

Prediction 2:

Neural networks, integrated with other artificial intelligence technologies, methods for direct culture of nervous tissue, and other exotic technologies such as genetic engineering, will allow us to develop radical and exotic life-forms whether man, machine, or hybrid.

Prediction 3:

Neural networks will allow us to explore new realms of human capabillity realms previously available only with extensive training and personal discipline. So a specific state of consiously induced neurophysiologically observable awareness is necessary in order to facilitate a man machine system interface.

 


Conclusion

The computing world has a lot to gain fron neural networks. Their ability to learn by example makes them very flexible and powerful. Furthermore there is no need to devise an algorithm in order to perform a specific task; i. e. there is no need to understand the internal mechanisms of that task. They are also very well suited for real time systems because of their fast responseand computational times which are due to their parallel architecture.

Neural networks also contribute to other areas of research such as neurology and psychology. They are regularly used to model parts of living organisms and to investigate the internal mechanisms of the brain.

Perhaps the most exciting aspect of neural networks is the possibility that some day ‘consious’ networks might be produced. There is a number of scientists arguing that conciousness is a ‘mechanical’ property and that ‘consious’ neural networks are a realistic possibility.

Finally, I would like to state that even though neural networks have a huge potential we will only get the best of them when they are intergrated with computing, AI, fuzzy logic and related subjects.

 

May 20

The scary part is over. You have found your leader. The very next step is a personal vow to yourself, and others, that you will never quit. Say it out load, “I will never quit trying. ” This might be the first time you have ever said that to yourself. Quitting simply means you stopped doing anything in that realm f o r e v e r. Just remove the word from your vocabulary and insert the words, “I will figure it out” and “Let’s wait and see” and “There is a solution” and “Don’t make any emotional decisions. ” Iti s the nature of most people to strop trying because they have not set realistic goals for themselves. Nothing in life is attainable without a plausible road map. Lets figure out your road map by starting with, understanding, and capitalizing on the compensation plan.

 

1. Define the Compensation Plan. What is it? Binary?  Matrix? 3×7? 3×9? Something else?

 

2. How many Personally Sponsored Independent Representatives do you need to activate your income?

 

3. What is the potential income?

 

4. How often do you get paid? How do you get paid?

 

5. Now set your goal for income.

 

The only way you can fail is if you stop trying. As in all other endeavors, you will get out of this business what you put into it. Life is a series of successes from attaining realistic goals that you have set for yourself based on performance. Your new MLM business operates by the same set of success rules. takes knowledge, effort and as with all new things, there is a learning curve. So don’t quit and figure out the compensation plan. The company you have joined will have these resources. But the best part is that you can now ask your leader!

 

Take the chance and see where network marketing takes you. Call me to discuss any questions you might have 561-598-8029 and for more information visit http://www. wowmobilecellphone. com

May 16

My name is Tawn also known as The Affiliate Way Network.   Its funny how many emails I get asking what in the world is The Affiliate Way Network.   To be honest it’s a long story that I really don’t like explaining because I don’t want to bore people.   Now, its important for me to explain because this has been a life changer for my family and I.

About 3 years ago I was working for Countrywide Home Loans making a nice living as a single man.   The Mortgage/Real Estate industry was my life which I held many positions in different departments over a 9 year period.   My positions were IT Support Specialist, Software Trainer, Morgage Closer, Mortgage Processor, Mortgage Underwriter, and a Post Sale Foreclosure Rep.   I would travel the world every week working in different cities and I loved every minute of it.   I had the power and cash to pretty much do what I wanted to do.   That all changed once the refi boom ended.

After the refi boom I got married to the love of my life and started to focus on being a family man after being single for so long.   My wife had been a surgical technician for years so we were making a great living.   A year into our marriage my wife became pregnant.   We were living in downtown Phoenix, AZ. in a nice condo we purchased.   We were on cloud 5 million and our lives were on the up and up. Then with a blink of an eye everything started falling like a ton of bricks.   My wife was laid off because they didn’t want to pay for her maternity.   We were going to sue but my wife did not need to be stressed out being pregnant.

Times got real rough after my wife lost her job.   Since we were living downtown in a luxury condo, cost started to put a strain on us.   I couldn’t pay for everything with my income alone so we had to move.   We moved to a nice house in West Phoenix as it was alot cheaper.   Once we moved everything started to stablize until I found out I needed knee surgery because of a defect that goes back to me place sports as a kid.   My wife was 8-9months pregnant at the time and she had to help me get dressed and drive me to work everyday.   I couldn’t walk for about 6months so my wife had to do everything.   “TALK ABOUT A SOLDIER!!!”

Once our son was born things started to get better as family stepped in to help out.   With the new joy in our life we really didn’t worry about anything else.   My leg was getting better, the bills were getting paid, and we had help from the family.   Then all of a sudden my wife started having complications from the birth.   Our son wasn’t a natural birth as my wife had to get a c-section.   She was having serious stomach pains and doctors didn’t really know what it was.   They had to go in again and take out scar tissue which is hereditary in her family. After the surgery months go by and she is still experiencing severe adominal pain.   Doctors go in again and find a syst on one of her ovaries which they correct.   After another surgery they said she should not be in any pain anymore.   Well the pain never went away. . . . . She had a  forth surgery that ended up being a partial hysterectomy.   They only took her uterus because they didn’t want her going thru full menopause at the age of 28.  

After the hysterectomy the unthinkable happened.   I was laid off because of the reccession.   The downfall of Countrywide Home Loans as we all know.   Now I have a sick wife, a new born child, no job, and NO INSURANCE. Talk about stress!!  I didn’t know what to do at the time.   My wife didn’t get any better as a matter a fact the doctor told us she has a disease call chronic pelvic pain which there is no cure.   My wife will be on medication for the rest of her life which means she will never work again.   We are still fighting as I speak to get her social security.   So what I did was hit the internet trying to find different ways to make money.   For months I would make alittle money then get scammed out of my money.   It was very frustrating but I did what I had to do.   Most of my education came from youtube and just doing normal research on Google like I was back in school.   If I didn’t have a supporting cast of family and the knowledge I gained from the internet we would have lost everything.

After months of frustration I got a call from one of my good friends I worked with at Countrywide.   He told me that an internet company was hiring with no experience needed.   The pay wasn’t great but it was something that could pay the bills.   It was a no brainer for me as I had been making small amounts of money online to keep us afloat.   I was hired on the spot and started 4 days later.   My career with the company seem promising as I was promoted to supervisor in one year of working.   I was training individuals and small businesses how to create an online business and promote it or market their current business.   The company had over 30,000 students which I personally trained over 5000 of them myself.   While working for the company I decided to create my own entity online.   I used my name T. A. W. N and I created The Affiliate Way Network. The reason I came up with that name was simple, I was training affiliate marketing and media placement.   It was just a hobby for me since I had a full time job.   Things started to get better as my wife started to adjust with her condition and enjoying our son.

I thought things were getting better but the more I worked the worse it got.   Don’t get me wrong everything was great at home but the job was another story.   The company I was working for were scamming people left and right.   That was very disappointing and disturbing.   All my students would do is complain about what they were promised by the company and no results.   I felt really bad because the company wanted me to smooth out things and just keep them happy.   IN OTHER WORDS LIE TO THEM!!!  So what I would do is give them things my company wouldn’t.   Some of the methods and tricks I would provide them my company didn’t know about.   Not to be big headed but it was the truth.   I would make video tutorials for my students so they didn’t have to call in all the time.   Everything I was doing for The Affiliate WayNetwork I would provide to my students.   Like I said before I do alot of research.   The only reason my students were staying with the company was because of me.   They understood I cared about their success as that was a reflection on me.   I would go above and beyond for my students and they knew that.   My company was all about the money and not about the client.

My wife and I decided to move to North Carolina and I never thought the company would keep me.   Well they did as I would work remotely from home.   We moved on September 25th 2009 and everything went well.   On October 17th 2009 they let me go.   Their reason was because of the recession, but the real reason was that they were losing money because of all the cancellations.   I was actually happy that they let me go because now I can focus on The Affiliate Way Network.   I’m glad they let me go because now I don’t have to lie anymore.   Most of my students have migrated to my services which is very affordable and I will go above and beyond for them.   The Affiliate Way Network is nothing more than a training center that helps you use the internet to market yourself or business.   Like I said before, this was a hobby to me but now its a business I enjoy.   My saying is:  “I LOVE WHAT I DO, I DO WHAT I LOVE. “ Now I have the power to do what I want when I want again.   I will never work for anyone else and not only that, I get to help people which has been my passion since I can remember.   This is why The Affiliate WayNetwork exist and how it came about.

May 14

There are millions of people earning money in network marketing and the numbers show it. In 2003, U. S. total direct selling sales totaled more than $29 billion, or almost 1% of the over $3,397 billion for total U. S. retail sales (U. S. Census Bureau).  With all these opportunities to be your own boss, you might ask,  “Where do I begin?”

 

First you should check out the business that you are interested in. You should do this by speaking directly with a successful leader in the company.
Besides asking questions about the products and the how much money you can earn, find out who is going to help you with training, marketing, and who will be there for you when you need advice or unexpected help.
Being part of the network marketing society is more about friendship and leadership than many people know. Leaders in the industry did not get that way by accident: some people are born leaders who thrive in the position and apply know-how by experience: They know what to do when a problem arises and exactly how to remedy situations- they are creative thinkers and 95% of the population needs a great leader.
An important point to help you understand, people in network marketing need leadership just like employees have upper management to rely on to make crucial decisions, motivate the team with positive reinforcement, and face each individual at their level to support them raise them up to try to meet their financial goals.
Remember, “Successful people do successful things. ” Look at your prospective leaders current situation- do they work the business full time or do they have another job? Are they stable? And really find out, how much do they know about what it takes to succeed in life?, Do they have ALL the professional bases covered such as training, leadership, marketing advice, good communication skills, and even blessings?
Also do you fit in with this power team? Dont go into a MLM Team blind not knowing your upline.
It’s not only leadership that is required but effort on your part to succeed. We know from experience you must have dicipline, a never quit attitude, good time management, and a willingness to learn from the best.

 

So that you can stand on your own, communication with the best leader you can find is the key to success in network marketing. You must join the team with the best leader you can find, your wealth depends on it.

May 8

Adoption Network Law Center – ANLC

Despite myths to the contrary, domestic newborn adoption remains alive and well in the United States. Current estimates of the annual number of infants adopted domestically (excluding foster and relative adoption) range from 25,000 to 30,000—more than all international adoptions combined. Moreover, the process can go much more swiftly that you might imagine. In a 2008 Adoptive Families survey, the majority of respondents were matched with a birthmother in less than 12 months, and 19% got “the call” to travel after the baby had already been born, without a prematch.

ANLC is a law center, not an agency, facilitator or law firm.

In most U. S. newborn adoptions, adoptive parents are selected by the birthparents of the child, and, in at least half of the cases, the birthparents and adoptive parents have met. Domestic adopters usually appreciate the opportunity to build a relationship with their child’s birth family. Ongoing contact is increasingly common, but the extent of contact varies significantly. A baby cannot legally be relinquished before birth. Most experts advise prospective adoptive parents to be careful about making an emotional commitment to a potential birthmother too early in her pregnancy.

Depending on the situation, and the laws of the state where the family lives and where the baby is born, prospective adoptive parents may cover some of the living and medical expenses of the birthmother.

If you’re just starting on the adoption journey, the wide array of choices before you can seem daunting at first–with each varying considerably from the next! With more options come more decisions, each with its own emotional and financial risks and benefits. To help you find the right path, here’s an overview of common routes to adoption.

Adopting a domestic infant via an adoption agency

Adoption Network Law Center: hopeful parents-to-be who seek a healthy, U. S. -born infant often enlist the help of an agency. Private agencies set their own criteria on applicants they will accept, some more restrictive than others. In the past, those using an agency had their names added to a list and waited for a match. Today, the trend toward openness means you’re likely to meet the birthparents, who may request ongoing contact with the child. The agency is likely to send a few sets of parent profiles to the potential birthparents, who pick the one they are most comfortable with. Then, the birthparents and adopting parents meet. At least half of the 15,000 or so domestic agency placements of infants each year involve such meetings. The child may be placed with the adopting parents immediately after birth or from foster care. If you insist on a closed process, your wait may be longer, since most agencies now encourage varying degrees of openness.

Adoption Network Law Center – ANLC article.

May 4

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