# Algorithm for Comparing Two Products? [closed]

I want to develop a site which can compare two products based on their features.

I want to store features as attributes in database. For example, Cellphone is a product so 'Screen Type' and 'Screen Resolution' are attributes and their values could be LED/AMOLED and 800x400/340x230.

Database could be of Cellphone/Laptop/TV but database will be for one product type only.

I want to know if there are any algorithms to find out best of two depending on their attributes?

Any suggestion/pointers will be more appreciated.

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## closed as not a real question by j08691, Michael Fredrickson, Shahbaz, mellamokb, paradigmaticApr 18 '12 at 16:27

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

There is a billion-dollar industry involving companies like Amazon on comparing products. I don't think your question is as simple as you think it is. Can you define what you mean by `best`? – mellamokb Apr 17 '12 at 16:57
For example, I have data of 100 products. Now If I compare any two of them, instead of listing features one against other it should tell me that Product 1 is best as it has come X score and Product 2 has Y (which is less than X) score. So, depending on features of two products I want to calculate a score by which i can tell which product is best. – Parag Meshram Apr 17 '12 at 17:07
ParagM, Have you noticed how there is not a single dominant brand in any product? That's because a lot of it depends on what people like, and people are different. Even if you do find an algorithm for this, I wouldn't suggest using it. You can't tell anyone what is best because best doesn't exist. – Shahbaz Apr 17 '12 at 17:20

Here's a possible algorithm, but it won't be applicable to multiple users/customers unless they share your same preferences (and disposable income!). I've done something roughly like this when looking for an apartment:

Step 1: For each feature, map the different options to a numerical value. I don't know much about cell phone screens, but let's say you consider an AMOLED screen to be worth 20% more than an LED screen. Values that are already numeric can either be mapped discretely or using an equation.

Step 2: Give each feature a weight.

Step 3: For each feature, multiply the weight by the value; add these up and you have a score for each product. Whichever product has the highest score wins.

For example, say each cell phone has these parameters:

• Screen type: LED or AMOLED
• Weight in grams
• Screen dimensions in inches, L*W
• Screen resolution in pixels, X*Y
• Battery life in hours

Mapping each parameter to a value, such that something twice as valuable is twice as high:

``````Screen type: LED => 1.0, AMOLED => 1.2
Weight: w => 50/(w+3)
Screen size: (L,W) => sqrt(L^2 + W^2) / 3
Screen DPI: (L,W,X,Y) => sqrt((X*Y)/(L*W)) / 100
Battery life: T => T / 20
``````

``````Screen type: 3
Weight: 1
Screen size: 4
Screen DPI: 2
Battery life: 2
``````

Compute score for cell phone #1 with an 800x400px, 3x4 inch, LED screen, weighing 40g, with 48 hours of battery life would get a score of:

``````3*1.0 + 1*50/(40+3) + 4*sqrt(3^2*4^2)/3 + 2*sqrt(800*400/(3*4))/100 + 2*48/20
= 28.23
``````

Compute score for cell phone #2 with an 100x100px, 2x1.5 inch, AMOLED screen, weighing 8g, with 200 hours of battery life would get a score of:

``````3*1.2 + 1*50/(8+3) + 4*sqrt(2^2*1.5^2)/3 + 2*sqrt(100*100/(2*1.5))/100 + 2*200/20
= 33.3
``````

So the second phone is "best". Other parameters, especially cost, should probably be included in the score.

Accurate results will require accurate mapping to a numerical scale and accurate relative weights - not an easy task, even to decide for yourself. You could allow users to set their own relative weights, perhaps...

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If you want to find a score for each product you need to find the product that isn't good or doesn't fit the category. A wilson-score intervall computes this 5% error rate and you can sort your product.

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