3 stories matched Female and Under 16 and Freedom and problem and area and water
Your search did not match enough stories to do a complete analysis. Only basic information is showing.
How good is this collection? (46/100) When making inferences, it is important to have many perspectives. Running
our story quality test will measure this using the diversity of story collectors, named organizations,
locations, and the balance in story point of view and tone to estimate the collection's suitability for meta-analysis.
Each component of the score is between 0 and 100, with 100 being the best and 0 being the worst.
Diverse sources: 3/100 (highest when collection contains hundreds of stories with miniminal overlap among the storytellers, named organizations, and locations)
Completeness: 95/100 (100% when every storytellers answer every question)
Diverse points of view: 0/100 (100% when there is a good balance of points of view. Personal experiences carry more weight over organization perspectrives.
Balance in story tone: 84/100 (100% if collection has a balance of positive and negative perspectives)
Your collection has a negative tone.
1 distinct clusters within this collection: 1 - (Uncategorized) - 3 stories
q2:There was a fundraising meeting which was held at the kakamega guest for a water project. Clean water was inadequate and hence water shortage in Shieywe village. The animals grew thinner. On the other hand, the people looked weak and skinny due to dehydration. WEWASAFO an NGO stood up and helped solve the problem. Bore holes were dug and therefore adequate water. Farms were supplied with water and irrigation was carried out. in a few weeks time, the area turned green as usual. The people decided never to cut down trees again. Q3:Water shortage Q4:WEWASAFO Q6:KENYA Q7:KAKAMEGA Q8:SHIEYWE Q9:2-6 months ago Q10:Female Q12:Was affected by what happened Q13:The right people Q15:Yes Q17:<<2012-07-12-KAKAMEGA-S#599-P#01>>_ Q18:Inspired Q19:Knowledge,Creativity,Freedom Q23:50 Q37:Good idea that succeeded Q38:Specific solution Q39:Social relations Q40:Mixed Q122:Under 16 Q132:None Q133:None Q134:Wewasafo
q2:Without any capital investment of anybody in the community modern Nakiyaga Harriet from South Africa incured all the expenses and extended water to Nasenke village where she constructed a house,this enabled the natives to overcome water shortage which had seemed to be serious problem to the people of the area. Q3:WATER EXTENSIONS Q4:INDIVIDUAL Q5:expenses, overcome, south, capital, house Q6:Uganda Q7:Lwengo Q8:Kabulasoke Q9:More than 2 years ago Q10:Female Q12:Heard about it happening Q13:The right people Q15:Yes Q17:<<11-12-2011-CEPO-S#232-P#01>>_ Q18:Happy Q19:Physical Needs,Knowledge,Freedom Q23:6 Q37:Good idea that succeeded Q38:Mixed Q39:Mixed Q40:Mixed Q122:Under 16 Q132:0.36060600000000 Q133:36.78195100000000 Q134:Individual
q2:Second term had began well but when it reached on march 21st tne climate changed.It started raining from morning untill evening non-stop.Maranda High School which was my neighbouring school started breaking down because of the strong wind that blew every now&then.
The whole area of bondo and Bundalangi was now badly flooded.
No sooner had peoole and animals started dying than the red cross society intervened in.the draining of water started by constructing dams and water tanks .People &student were served in life boats.The school was rebuilt and food was supplied all over
This was a great solution to the problem. Q3:unexpected flood&its damages Q4:red cross society Q6:Kenya Q7:kisumu Q8:nyanza,budalangi Q9:More than 2 years ago Q10:Female Q12:Was affected by what happened Q13:The right people Q15:Yes Q17: <<2011-87-960-MATHARE-S#249-p#01>>_ Q18:Inspired Q19:Knowledge,Self-esteem,Freedom Q37:Good idea that succeeded Q38:Specific problem Q39:Physical well-being Q40:Mixed Q122:Under 16 Q132:-0.05000000000000 Q133:34.68333000000000 Q134:Red Cross
 
Found 3 records. mysql icon_filters: group_id between 0 and 5000 and q10 = 'Female' and q19 like '%Freedom%' and q122 = 'Under 16' and (( q2 like '%problem%' and q2 like '%area%' and q2 like '%water%' ) or ( q3 like '%problem%' and q3 like '%area%' and q3 like '%water%' ) or ( q4 like '%problem%' and q4 like '%area%' and q4 like '%water%' ) or ( q5 like '%problem%' and q5 like '%area%' and q5 like '%water%' ) or ( q6 like '%problem%' and q6 like '%area%' and q6 like '%water%' ) or ( q7 like '%problem%' and q7 like '%area%' and q7 like '%water%' ) or ( q8 like '%problem%' and q8 like '%area%' and q8 like '%water%' ) or ( q11 like '%problem%' and q11 like '%area%' and q11 like '%water%' ) or ( q17 like '%problem%' and q17 like '%area%' and q17 like '%water%' ) or ( q26 like '%problem%' and q26 like '%area%' and q26 like '%water%' ) or ( q27 like '%problem%' and q27 like '%area%' and q27 like '%water%' ) or ( q28 like '%problem%' and q28 like '%area%' and q28 like '%water%' ) or ( q29 like '%problem%' and q29 like '%area%' and q29 like '%water%' ) or ( q35 like '%problem%' and q35 like '%area%' and q35 like '%water%' ) or ( q41 like '%problem%' and q41 like '%area%' and q41 like '%water%' ) or ( q42 like '%problem%' and q42 like '%area%' and q42 like '%water%' ) or ( q43 like '%problem%' and q43 like '%area%' and q43 like '%water%' ) or ( q46 like '%problem%' and q46 like '%area%' and q46 like '%water%' ) or ( q47 like '%problem%' and q47 like '%area%' and q47 like '%water%' ) or ( q60 like '%problem%' and q60 like '%area%' and q60 like '%water%' ) or ( q65 like '%problem%' and q65 like '%area%' and q65 like '%water%' ) or ( q70 like '%problem%' and q70 like '%area%' and q70 like '%water%' ) or ( q71 like '%problem%' and q71 like '%area%' and q71 like '%water%' ) or ( q72 like '%problem%' and q72 like '%area%' and q72 like '%water%' ) or ( q73 like '%problem%' and q73 like '%area%' and q73 like '%water%' ) or ( q74 like '%problem%' and q74 like '%area%' and q74 like '%water%' ) or ( q75 like '%problem%' and q75 like '%area%' and q75 like '%water%' ) or ( q76 like '%problem%' and q76 like '%area%' and q76 like '%water%' ) or ( q77 like '%problem%' and q77 like '%area%' and q77 like '%water%' ) or ( q80 like '%problem%' and q80 like '%area%' and q80 like '%water%' ) or ( q81 like '%problem%' and q81 like '%area%' and q81 like '%water%' ) or ( q86 like '%problem%' and q86 like '%area%' and q86 like '%water%' ) or ( q87 like '%problem%' and q87 like '%area%' and q87 like '%water%' ) or ( q88 like '%problem%' and q88 like '%area%' and q88 like '%water%' ) or ( q89 like '%problem%' and q89 like '%area%' and q89 like '%water%' ) or ( q98 like '%problem%' and q98 like '%area%' and q98 like '%water%' ) or ( q99 like '%problem%' and q99 like '%area%' and q99 like '%water%' ) or ( q110 like '%problem%' and q110 like '%area%' and q110 like '%water%' ) or ( q111 like '%problem%' and q111 like '%area%' and q111 like '%water%' ) or ( q116 like '%problem%' and q116 like '%area%' and q116 like '%water%' ) or ( q117 like '%problem%' and q117 like '%area%' and q117 like '%water%' ) or ( q123 like '%problem%' and q123 like '%area%' and q123 like '%water%' ) or ( q125 like '%problem%' and q125 like '%area%' and q125 like '%water%' ) or ( q132 like '%problem%' and q132 like '%area%' and q132 like '%water%' ) or ( q133 like '%problem%' and q133 like '%area%' and q133 like '%water%' ) or ( q134 like '%problem%' and q134 like '%area%' and q134 like '%water%' ) or ( q135 like '%problem%' and q135 like '%area%' and q135 like '%water%' ) or ( q136 like '%problem%' and q136 like '%area%' and q136 like '%water%' ) or ( q138 like '%problem%' and q138 like '%area%' and q138 like '%water%' ) or ( q141 like '%problem%' and q141 like '%area%' and q141 like '%water%' ) or ( q142 like '%problem%' and q142 like '%area%' and q142 like '%water%' ) or ( q151 like '%problem%' and q151 like '%area%' and q151 like '%water%' )) LIMIT 4000; filter_questions ['q10', 'q19', 'q122'] merge:ignore A[z80WDS0ztq5g]:SUCCESS: 1 rows inserted. not enough values to unpack (expected 3, got 2)