I will assume you have already decided on a relational database since you indicated SQL Server in your tags, and that the model you are asking about is the table design for the problem you have described.
There are a lot of discussions of inheritance in database design and some are discussed here.
I would say that unless the entities are really similar, it makes little sense to share things like names in a common table. On the other hand, if you need a single set of geographic coordinates and an icon type to display on a map, then that set might obviously be across entity types. Still one could solve that with UNION at the time of the query, so it perhaps shouldn't be your overriding design principle unless geography is a primary facet of your application and even then, one might simply split geolocation into its own table with appropriate indexing.
I would first lay out all the attributes for your different entities and decide which ones are very similar. Some of those will be so similar that they would be in the same table with a type indicator column. For instance, you listed hospital and clinic - I can't imagine these would have very many differences unless you had extensive details about the services or sub-departments and even then I expect a clinic would simply be a hospital with fewer entries in its related services or departments table.
I would be more interested in the nature of the uncommon qualities, because unless they were very extensive, all of these entities would seem to be in the same table. Since the first step in relational data modeling is to identify all the attribute data first and then identify the relations to candidate keys, I would see about gathering the atttributes first and seeing just how many differences there are.
Optimizing for search is going to depend upon how your searches are defined. For instance if you are searching by location, you might have your entities tagged with a metro area only or full geolocation. There is indexing which would help you be able to search on distance from a location. If you need to choose only certain types of entities, you would ensure that your indexes included that column. At this point, denormalization is not going to help your search as much as indexing which covers the queries. Denormalization works best when the result sets are large. The point of search is to give users result sets, which, by definition, must be small for them to be able to find them useful. A list of 1000 restaurants is not useful to a user, since they can only eat at a handful in a day.
As far as ease of use, I assume you are talking about ease of access from a programming perspective. If you end up with an EAV model, you can always make it easier to query by using views. If you have a single entity table but want easier ways to get just hospitals, again, views can help, so just because you have a certain underlying database model, you can still present it to other levels of the system in different ways, and these don't always necessarily introduce a lot of performance issues, since the optimizer can work very well with views (as long as they don't encounter things they have a hard time working around like aggregates which stop them being able to rearrange them as easily).